Fashion AI - Ximilar: Visual AI for Business https://www3.ximilar.com/blog/tag/fashion-ai/ VISUAL AI FOR BUSINESS Wed, 18 Sep 2024 13:01:32 +0000 en-US hourly 1 https://wordpress.org/?v=6.6.2 https://www.ximilar.com/wp-content/uploads/2024/08/cropped-favicon-ximilar-32x32.png Fashion AI - Ximilar: Visual AI for Business https://www3.ximilar.com/blog/tag/fashion-ai/ 32 32 New Solutions & Innovations in Fashion and Home Decor AI https://www.ximilar.com/blog/fashion-and-home-updates-2024/ Wed, 18 Sep 2024 12:09:13 +0000 https://www.ximilar.com/?p=18116 Our latest AI innovations for fashion & home include automated product descriptions, enhanced fashion tagging, and home decor search.

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Automate Writing of SEO-Friendly Product Titles and Descriptions With Our AI

Our AI-powered Product Description revolutionizes the way you manage your fashion apparel catalogs by fully automating the creation of product titles and descriptions. Instead of spending hours manually tagging and writing descriptions, our AI-driven generator swiftly produces optimized texts, saving you valuable time and effort.

Ximilar automates keyword extraction from your fashion images, enabling you to instantly create SEO-friendly product titles and descriptions, streamlining the inventory listing process.

With the ability to customize style, tonality, format, length, and preferred product tags, you can ensure that each description aligns perfectly with your brand’s voice and SEO needs. This service is designed to streamline your workflow, providing accurate, engaging, and search-friendly descriptions for your entire fashion inventory.

Enhanced Taxonomy for Accessories Product Tagging

We’ve upgraded our taxonomy for accessories tagging. For sunglasses and glasses, you can now get tags for frame types (Frameless, Fully Framed, Half-Framed), materials (Combined, Metal, Plastic & Acetate), and shapes (Aviator, Cat-eye, Geometric, Oval, Rectangle, Vizor/Sport, Wayfarer, Round, Square). Try how it works on your images in our public demo.

Our tags for accessories cover all visual features from materials to patterns or shapes.

Automate Detection & Tagging of Home Decor Images With AI

Our new Home Decor Tagging service streamlines the process of categorizing and managing your home decor product images. It uses advanced recognition technology to automatically assign categories, sub-categories, and tags to each image, making your product catalog more organized. You can customize the tags and choose translations to fit your needs.

Try our interactive home decor detection & tagging demo.

The service also offers flexibility with custom profiles, allowing you to rename tags or add new ones based on your requirements. For pricing details and to see the service in action, check our API documentation or contact our support team for help with custom tagging and translations.

Visual Search for Home Decor: Find Products With Real-Life Photos

With our new Home Decor Search service, customers can use real-life photos to find visually similar items from your furniture and home decor catalogue.

Our tool integrates four key functionalities: home decor detection, product tagging, colour extraction, and visual search. It allows users to upload a photo, which the system analyzes to detect home decor items and match them with similar products from your inventory.

Our Home Decor Search tool suggests similar alternatives from your inventory for each detected product.

To use Home Decor Search, you first sync your database with Ximilar’s cloud collection. This involves processing product images to detect and tag items, and discarding the images immediately after. Once your data is synced, you can perform visual searches by submitting photos and retrieving similar products based on visual and tag similarity.

The API allows for customized searches, such as specifying exact objects of interest or integrating custom profiles to modify tag outputs. For a streamlined experience, Ximilar offers options for automatic synchronization and data mapping, ensuring your product catalog remains up-to-date and accurate.

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How Fashion Tagging Works and Changes E-Commerce? https://www.ximilar.com/blog/how-fashion-tagging-works/ Wed, 22 May 2024 10:05:34 +0000 https://www.ximilar.com/?p=15764 An in-depth overview of the key AI tools reshaping the fashion industry, with a focus on automated fashion tagging.

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Keeping up with the constantly emerging trends is essential in the fashion industry. Beyond shifts in cuts, materials, and colours, staying updated on technological trends has become equally, if not more, crucial in recent years. Given our expertise in Fashion AI, let’s take a look at the key technologies reshaping the world of fashion e-commerce, with a particular focus on a key Fashion AI tool: automated fashion tagging.

AI’s Impact on Fashion: Turning the Industry on Its Head

The latest buzz in the fashion e-commerce realm revolves around visual AI. From AI-powered fashion design to AI-generated fashion models, and all the new AI tools, which rapidly change our shopping experience by quietly fueling the product discovery engines in the background, often unnoticed.

Key AI-Powered Technologies in Fashion E-Commerce

So what are the main AI technologies shaking up fashion e-commerce lately? And why is it important to keep up with them?

Recognition, Detection & Data Enrichment in Fashion

In the world of fashion e-commerce, time is money. Machine learning techniques now allow fashion e-shops to upload large unstructured collections of images and extract all the necessary information from them within milliseconds. The results of fashion image recognition (tags/keywords) serve various purposes like product sorting, filtering, searching, and also text generation.

Breaking down automated fashion tagging: AI can automatically assign relevant tags and save you a significant amount of money and time, compared to the manual process.
AI can automatically assign relevant tags and save you a significant amount of money and time, compared to the manual process.

These tools are indispensable for today’s fashion shops and marketplaces, particularly those with extensive stock inventories and large volumes of data. In the past few years, automated fashion tagging has made time-consuming manual product tagging practically obsolete.

Generative AI Systems for Fashion

The fashion world has embraced generative artificial intelligence almost immediately. Utilizing advanced AI algorithms and deep learning, AI can analyze images to extract visual attributes such as styles, colours, and textures, which are then used to generate visually stunning designs and written content. This offers endless possibilities for creating personalized shopping experiences for consumers.

Different attributes extracted by automated product tagging can directly serve as keywords for product titles and descriptions. You can set the tonality, and length, or choose important attributes to be mentioned in the texts.
Different attributes extracted during the product tagging process can directly serve for titles and descriptions. You can set the style and length, or choose important attributes.

Our AI also enables you to automate the writing of all product titles and product descriptions via API, directly utilizing the product attributes extracted with deep tagging and letting you select the tone, length, and other rules to get SEO-friendly texts quickly. We’ll delve deeper into this later on.

Fashion Discovery Engines and Recommendation Systems

Fashion search engines and personalized recommendations are game-changers in online shopping. They are powered by our speciality: visual search. This technology analyzes images in depth to capture their essence and search vast product catalogs for identical or similar products. Three of its endless uses are indispensable for fashion e-commerce: similar items recommendations, reverse image search and image matching.

Personalized experiences and product recommendations are the key to high engagement of customers.
Personalized experiences and product recommendations are essential for high engagement of customers.

Visual search enables shoppers to effortlessly explore new styles, find matching pieces, and stay updated on trends. It allows you to have your own visual search engine, that rapidly scans image databases with millions of images to provide relevant and accurate search results within milliseconds. This not only saves you time but also ensures that every purchase feels personalized.

Shopping Assistants in Fashion E-Commerce and Retail

The AI-driven assistants guide shoppers towards personalized outfit choices suited for any occasion. Augmented Reality (AR) technology allows shoppers to virtually try on garments before making a purchase, ensuring their satisfaction with every selection. Personalized styling advice and virtual try-ons powered by artificial intelligence are among the hottest trends developed for fashion retailers and fashion apps right now.

Both fashion tags for occasions extracted with our automated product tagging, as well as similar item recommendations, are valuable in systems that assist customers in dressing appropriately for specific events.

My Fashion Website Needs AI Automation, What Should I Do?

Consider the Needs of Your Shoppers

To provide the best customer experience possible, always take into account your shoppers’ demographics, geographical location, language preferences, and individual styles.

However, predicting style is not an easy task. But by utilizing AI, you can analyze various factors such as user preferences, personal style, favoured fashion brands, liked items, items in their shopping baskets, and past purchases. Think about how to help them discover items aligned with their preferences and receive only relevant suggestions that inspire rather than overwhelm them.

There are endless ways to improve a fashion e-shop. Always keep in mind not to overwhelm the visitors, and streamline your offer to the most relevant items.

While certain customer preferences can be manually set up by users when logging into an app or visiting an e-commerce site, such as preferred sizes, materials, or price range, others can be predicted. For example, design preferences can be inferred based on similarities with items visitors have browsed, liked, saved, or purchased.

Three Simple Steps to Elevate Your Fashion Website With AI

Whether you run a fashion or accessories e-shop, or a vintage fashion marketplace, using these essential AI-driven features could boost your traffic, improve customer engagement, and get you ahead of the competition.

Automate Product Tagging & Text Generation

The image tagging process is fueled by specialised object detection and image recognition models, ensuring consistent and accurate tagging, without the need for any additional information. Our AI can analyze product images, identify all fashion items, and then categorize and assign relevant tags to each item individually.

In essence, you input an unstructured collection of fashion images and receive structured metadata, which you can immediately use for searching, sorting, filtering, and product discovery on your fashion website.

Automated fashion tagging relies on neural networks and deep learning techniques. The product attributes are only assigned with a certain level of confidence, highlighted in green in our demo.
AI image tagging relies on neural networks and deep learning techniques. We only assign product attributes with a certain level of confidence, highlighted in green in our demo.

The keywords extracted by AI can serve right away to generate captivating product titles and descriptions using a language model. With Ximilar, you can pre-set the tone and length, and even set basic rules for AI-generated texts tailored for your website. This automates the entire product listing process on your website through a single API integration.

Streamline and Automate Collection Management With AI

Visual AI is great for inventory management and product gallery assembling. It can recognize and match products irrespective of lighting, format, or resolution. This enables consistent image selection for product listings and galleries.

You can synchronise your entire fashion apparel inventory via API to ensure continual processing by up-to-date visual AI. You can either set the frequency of synchronization (e.g., the first day of each month) or schedule the synchronization run every time you add a new addition to the collection.

A large fashion e-commerce store can list tens of thousands of items, with millions of fashion images. AI can sort images in product galleries and references based purely on visual attributes.
A large fashion e-commerce store can have millions of fashion images. AI can sort images in product galleries and references based purely on visual attributes.

For example, you can showcase all clothing items on models in product listings or display all accessories as standalone photos in the shopping cart. Additionally, you can automate tasks like removing duplicates and sorting user-generated visual content, saving a lot of valuable time. Moreover, AI can be used to quickly spot inappropriate and harmful content.

Provide Relevant Suggestions & Reverse Image Search

During your collection synchronisation, visual search processes each image and each product in it individually. It precisely analyzes various visual features, such as colours, patterns, edges and other structures. Apart from the inventory curation, this will enable you to:

  1. Have your custom fashion recommendation system. You can provide relevant suggestions from your inventory anywhere across the customer journey from the start page to the kart.
  2. Improve your website or app with a reverse image search tool. Your visitors can search with smartphone photos, product images, pictures from Pinterest, Instagram, screenshots, or even video content.
Looking for a specific dress? Reverse image search can provide relevant results to a search query, independent of the quality or source of the images.
Looking for a specific dress? Reverse image search can provide relevant results to a search query, independent of the quality or source of the images.

Since fashion detection, image tagging and visual search are the holy trinity of fashion discovery systems, we’ve integrated them into a single service called Fashion Search. Check out my article Everything You Need to Know About Fashion Search to learn more.

Visual search can match images, independent of their origin (e.g., professional images vs. user-generated content), quality and format. We can customize it to fit your collection, even for vintage pieces, or niche fashion brands. For a firsthand experience of how basic fashion visual search operates, check out our free demo.

How Does the Automated Fashion Tagging Work?

Let’s take a closer look at the basic AI-driven tool for the fashion industry: automated fashion tagging. Our product tagging is powered by a complex hierarchy of computer vision models, that work together to detect and recognize all fashion products in an image. Then, each product gets one category (e.g., Clothing), one or more subcategories (e.g., Evening dresses or Cocktail dresses), and a varied set of product tags.

To name a few, fashion tags describe the garment’s type, cut, fit, colours, material, or patterns. For shoes, there are features such as heels, toes, materials, and soles. Other categories are for instance jewellery, watches, and accessories.

In the past, assigning relevant tags and texts to each product was a labor-intensive process, slowing down the listing of new inventory on fashion sites. Image tagging solved this issue and lowered the risk of human error.
In the past, assigning relevant tags and texts to each product was a labor-intensive process, slowing down the listing of new inventory on fashion sites. Image tagging solved this issue and eliminated the risk of human error.

The fashion taxonomy encompasses hundreds of product tags for all typical categories of fashion apparel and accessories. Nevertheless, we continually update the system to keep up with emerging trends in the fashion industry. Custom product tags, personal additions, taxonomy mapping, and languages other than the default English are also welcomed and supported. The service is available online – via API.

How Do I Use the Automated Fashion Tagging API?

You can seamlessly integrate automated fashion tagging into basically any website, store, system, or application via REST API. I’d suggest taking these steps first:

First, log into Ximilar App – After you register into Ximilar App, you will get the unique API authentication token that will serve for your private connection. The App has many useful functions, which are summarised here. In the past, I wrote this short overview that could be helpful when navigating the App for the first time.

If you’d like to try creating and training your own additional machine learning models without coding, you can also use Ximilar App to approach our computer vision platform.

Secondly, select your plan – Use the API credit consumption calculator to estimate your credit consumption and optimise your monthly supply. This ensures your credit consumption aligns with the actual traffic on your website or app, maximizing efficiency.

Use Ximilar's credit consumption calculator to optimise your monthly supply.
Use Ximilar’s credit consumption calculator to optimise your monthly supply.

And finally, connect to API – The connection process is described step by step in our API documentation. For a quick start, I suggest checking out First Steps, Authentication & Image Data. Automated Fashion Tagging has dedicated documentation as well. However, don’t hesitate to reach out anytime for guidance.

Do You Need Help With the Setup?

Our computer vision specialists are ready to assist you with even the most challenging tasks. We also welcome all suggestions and custom inquiries to ensure our solutions meet your unique needs. And if you require a custom solution, our team of developers is happy to help.

We also offer personalized demos on your data before the deployment, and can even provide dedicated server options or set up offline solutions. Reach out to us via live chat for immediate assistance and our team will guide you through the entire process. Alternatively, you can contact us via our contact page, and we will get back to you promptly.

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Image Annotation Tool for Teams https://www.ximilar.com/blog/image-annotation-tool-for-teams/ Thu, 06 May 2021 11:55:57 +0000 https://www.ximilar.com/?p=4115 Annotate is an advanced image annotation tool supporting complex taxonomies and teamwork on computer vision projects.

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Through the years, we worked with many annotation tools. The problem is most of the desktop annotating apps are offline and intended for single-person use, not for team cooperation. The web-based apps, on the other hand, mostly focus on data management with photo annotation, and not on the whole ecosystem with API and inference systems. In this article, I review, what should a good image annotation tool do, and explain the basic features of our own tool – Annotate.

Every big machine learning project requires the active cooperation of multiple team members – engineers, researchers, annotators, product managers, or owners. For example, supervised deep learning for object detection, as well as segmentation, outperforms unsupervised solutions. However, it requires a lot of data with correct annotations. Annotation of images is one of the most time-consuming parts of every deep learning project. Therefore, picking the right annotator tool is critical. When your team is growing and your projects require higher complexity over time, you may encounter new challenges, such as:

  • Adding labels to the taxonomy would require re-checking a lot of your work
  • Increasing the performance of your models would require more data
  • You will need to monitor the progress of your projects

Building solid annotation software for computer vision is not an easy task. And yes, it requires a lot of failures and taking many wrong turns before finding the best solution. So let’s look at what should be the basic features of an advanced data annotation tool.

What Should an Advanced Image Annotation Tool Do?

Many customers are using our cloud platform Ximilar App in very specific areas, such as FashionHealthcare, Security, or Industry 4.0. The environment of a proper AI helper or tool should be complex enough to cover requirements like:

  • Features for team collaboration – you need to assign tasks, and then check the quality and consistency of data
  • Great user experience for dataset curation – everything should be as simple as possible, but no simpler
  • Fast production of high-quality datasets for your machine-learning models
  • Work with complex taxonomies & many models chained with Flows
  • Fast development and prototyping of new features
  • Connection to Rest API with Python SDK & querying annotated data

With these needs in mind, we created our own image annotation tool. We use it in our internal projects and provide it to our customers as well. Our technologies for machine learning accelerate the entire pipeline of building good datasets. Whether you are a freelancer tagging pictures or a team managing product collections in e-commerce, Annotate can help.

Our Visual AI tools enable you to work with your own custom taxonomy of objects, such as fashion apparel or things captured by the camera. You can read the basics on the categories & tags and machine learning model training, watch the tutorials, or check our demo and see for yourself how it works.

The Annotate

Annotate is an advanced image annotation tool, which enables you to annotate images precisely and fast. It works as an end-to-end platform for visual data management. You can query the same images, change labels, create objects, draw bounding boxes and even polygons here.

It is a web-based online annotation tool, that works fully on the cloud. Since it is connected to the same back-end & database as Ximilar App, all changes you do in Annotate, manifest in your workspace in App, and vice versa. You can create labels, tasks & models, or upload images through the App, and use them in Annotate.

Ximilar Application and Annotate are connected to the same backend (api.ximilar.com) and the same database.

Annotate extends the functionalities of the Ximilar App. The App is great for training, creating entities, uploading data, and batch management of images (bulk actions for labelling and filtering). Annotate, on the other hand, was created for the detail-oriented management of images. The default single-zoomed image view brings advantages, such as:

  • Identifying separate objects, drawing polygons and adding metadata to a single image
  • Suggestions based on AI image recognition help you choose from very complex taxonomies
  • The annotators focus on one image at a time to minimize the risk of mistakes

Interested in getting to know Annotate better? Let’s have a look at its basic functions.

Deep Focus on a Single Image

If you enter the Images (left menu), you can open any image in the single image view. To the right of the image, you can see all the items located in it. This is where most of the labelling is done. There is also a toolbar for drawing objects and polygons, labelling images, and inspecting metadata.

In addition, you can zoom in/out and drag the image. This is especially helpful when working with smaller objects or big-resolution images. For example, teams annotating medical microscope samples or satellite pictures can benefit from this robust tool.

View on image annotation tool. This is main view with tools and labels present.
The main view of the image in our Fashion Tagging workspace

Create Multiple Workspaces

Some of you already know this from other SaaS platforms. The idea is to divide your data into several independent storages. Imagine your company is working on multiple projects at the same time and each of them requires you to label your data with an image annotation tool. Your company account can have many workspaces, each for one project.

Here is our active workspace for Fashion Tagging

Within the workspaces, you don’t mix your images, labels, and tasks. For example, one workspace contains only images for fruit recognition projects (apples, oranges, and bananas) and another contains data on animals (cats and dogs).

Your team members can get access to different workspaces. Also, everyone can switch between the workspaces in the App as well as in Annotate (top right, next to the user icon). Did you know, that the workspaces are also accessible via API? Check out our documentation and learn how to connect to API.

Train Precise AI Models with Verification

Building good computer vision models requires a lot of data, high-quality annotations, and a team of people who understand the process of building such a dataset. In short, to create high-quality models, you need to understand your data and have a perfectly annotated dataset. In the words of the Director of AI at Tesla, Andrej Karpathy:

Labeling is a job for highly trained professionals. Andrej Karpathy (Head of AI at Tesla)

Annotate helps you build high-quality AI training datasets by verification. Every image can be verified by different users in the workspace. You can increase the precision by training your models only on verified images.

Verifications list for image.
A list of users who verified the image with the exact dates

Verifying your data is a necessary requirement for the creation of good deep-learning models. To verify the image, simply click the button verify or verify and next (if you are working on a job). You will be able to see who verified any particular image and when.

Create and Track Image Annotating Jobs

When you need to process the newly uploaded images, you can assign them to a Job and a team of people can process them one by one in a job queue. You can also set up exactly how many times each image should be seen by the people processing this queue.

Moreover, you can specify, which photo recognition model or flow of models should be displayed when doing the job. For example, here is the view of the jobs that we are using in one of our tagging services.

List of jobs for image annotation.
Two jobs are waiting to be completed by annotators,
you can start working by hitting the play button on the right

When working on a job, every time an annotator hits the Verify & Next button, it will redirect them to a new image within a job. You can track the progress of each job in the Jobs. Once the image annotation job is complete, the progress bar turns green, and you can proceed to the next steps: retraining the models, uploading new images, or creating another job.

Draw Objects and Polygons

Sometimes, recognizing the most probable category or tags for an image is not enough. That is why Annotate provides a possibility to identify the location of specific things by drawing objects and polygons. The great thing is that you are not paying any credits for drawing objects or labelling. This makes Annotate one of the most cost-effective online apps for image annotation.

Drawing tool for image annotation. Creating bounding box for object detection model.
Simply click and drag the rectangle with the rectangle tool on canvas to create the detection object.

What exactly do you pay for, when annotating data? The only API credits are counted for data uploads, with volume-based discounts. This makes Annotate an affordable, yet powerful tool for data annotation. If you want to know more, read our newest Article on API Credit Packs, check our Pricing Plans or Documentation.

Annotate With Complex Taxonomies Elegantly

The greatest advantage of Annotate is working with very complex taxonomies and attribute hierarchies. That is why it is usually used by companies in E-commerce, Fashion, Real Estate, Healthcare, and other areas with rich databases. For example, our Fashion tagging service contains more than 600 labels that belong to more than 100 custom image recognition models. The taxonomy tree for some of the biotech projects can be even broader.

Navigating through the taxonomy of labels is very elegant in Annotate – via Flows. Once your Flow is defined (our team can help you with it), you simply add labels to the images. The branches expand automatically when you add labels. In other words, you always see only essential labels for your images.

Adding labels from complex taxonomy to fashion image.
Simply navigate through your taxonomy tree, expanding branches when clicking on specific labels.

For example, in this image is a fashion object “Clothing”, to which we need to assign more labels. Adding the Clothing/Dresses label will expand the tags that are in the Length Dresses and Style Dresses tasks. If you select the label Elegant from Style Dresses, only features & attributes you need will be suggested for annotation.

Automate Repetitive Tasks With AI

Annotate was initially designed to speed up the work when building computer vision solutions. When annotating data, manual drawing & clicking is a time-consuming process. That is why we created the AI helper tools to automate the entire annotating process in just a few clicks. Here are a few things that you can do to speed up the entire annotation pipeline:

  • Use the API to upload your previously annotated data to train or re-train your machine learning models and use them to annotate or label more data via API
  • Create bounding boxes and polygons for object detection & instance object segmentation with one click
  • Create jobs, share the data, and distribute the tasks to your team members
Automatically predict objects on one click speeds up annotating data.
Predicting bounding boxes with one click automates the entire process of annotation.

Image Annotation Tool for Advanced Visual AI Training

As the main focus of Ximilar is AI for sorting, comparing, and searching multimedia, we integrate the annotation of images into the building of AI search models. This is something that we miss in all other data annotation applications. For the building of such models, you need to group multiple items (images or objects, typically product pictures) into the Similarity Groups. Annotate helps us create datasets for building strong image similarity search models.

Grouping same or similar images with Image Annotation Tool.
Grouping the same or similar images with the Image Annotation Tool. You can tell which item is a smartphone photo or which photos should be located on an e-commerce platform.

Annotate is Always Growing

Annotate was originally developed as our internal image annotation software, and we have already delivered a lot of successful solutions to our clients with it. It is a unique product that any team can benefit from and improve the computer vision models unbelievably fast

We plan to introduce more data formats like videos, satellite imagery (sentinel maps), 3D models, and more in the future to level up the Visual AI in fields such as visual quality control or AI-assisted healthcare. We are also constantly working on adding new features and improving the overall experience of Ximilar services.

Annotate is available for all users with Business & Professional pricing plans. Would you like to discuss your custom solution or ask anything? Let’s talk! Or read how the cooperation with us works first.

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Everything You Need to Know About Fashion Search https://www.ximilar.com/blog/everything-you-need-to-know-about-fashion-search/ Wed, 07 Apr 2021 14:13:21 +0000 https://www.ximilar.com/?p=3133 After years of experience in e-commerce, we developed the Fashion Search enabling sellers to create their own fashion product discovery systems.

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Keeping up with fashion trends is hard. And it’s even harder to satisfy clothing buyers, especially when most of the traditional stores are closed, and the consumers’ preferences are shifting towards e-commerce. It is crucial not only to bring the customers but to keep them on the website to increase the revenue – and with the ever-growing technological progress, the competition is increasing as well. After years of experience in Fashion AI, Ximilar developed the service Fashion Search tailored to the needs of customers dealing with a wide range of apparel (such as clothes, footwear, jewellery, and other accessories). Fashion Search covers apparel detection, tagging, sorting, and even suggestions based on visitors’ pictures, enabling you to build a memorable customer experience, make them happier and boost sales.

Customer Experience is Important

It all starts and ends with the customer experience. According to PwC, a good experience leaves people feeling heard and appreciated. And a disappointing experience, on the other hand, drives them away almost instantaneously. When the respondents were asked what they value the most, 80 % chose efficiency, convenience and friendly service, and 75 % chose up-to-date technology.

[Source: Wayhomestudio]

80 % of American consumers say that speed, convenience, knowledgeable help and friendly service are the most important elements of a positive customer experience. Prioritize technologies that provide these benefits rather than adopting new technologies for the sake of being cutting edge.

PwC, Experience is Everything

The KPMG 2018 research findings were similar: customer experience is more influential than ever. More importantly, AI gains more clout by delivering personalized, customized, and localized experiences to customers. AI, such as machine learning algorithms, intelligent search, or chatbots, take part in the entire product and service cycle nowadays. In addition, Accenture recently wrote that AI, neural networks, and image search are the leading technologies behind the apps taking over the market. And that they are important trends to watch in the following years.

Fashion E-Commerce Trends in 2021

Big trends in current fashion e-commerce are sustainability, slow fashion, second-hand apparel, and resale. For example, the second-hand clothes marketplace Vinted is growing exponentially. According to THREDUP, there are more second-hand shoppers than ever before, and the resale is going to be bigger than fast fashion by 2029.

Numbers in Fashion E-commerce are clear: we will work with users’ visual data on a much larger scale & it’s about time to step up our game with personalized recommendations.

There were major changes to consumer behaviour as well during the coronavirus pandemic. Glami’s 2021 Fashion Research showed that an astonishing half of the shops moved to the online world, and the number of online consumers is still growing. They are looking for visual inspiration, want shopping to be intuitive and fast, and expect personalized experiences more than ever.

What is Fashion Search?

The Fashion Search is an advanced Visual AI service, custom-built for the fashion industry. It enables you to create your own product discovery system, work smarter with data, and build a better customer experience. Fashion Search brings together the services and features most requested by our fashion e-commerce customers:

  1. Object Detection & Fashion Tagging
    The fashion apparel in your images is automatically detected and tagged. Our Fashion Tagging works with a hundred recognition models, hundreds of labels, and dozens of features, all chained into interconnected flows, enabling you to add content 24/7. We refine the quality and add new fashion attributes (features, categories & tags) to this service constantly. However, custom tags are welcomed as well. Read more about Fashion Tagging here.

  2. Product Similarity & Search by Photo
    This Visual Similarity combo enables you to provide a personalized customer experience. The Product Similarity finds and suggests similar products to the item your customer is viewing. As a result, the click rate increases up to 380 %. Search by Photo accepts the pictures your visitors uploaded and automatically recommends similar items from your collection. For example, it can analyze fashion influencer photos and help your customers find trending items on your site. Read more about Visual Search in Fashion or How to Build Superfast Image Similarity for your Website.

  3. Synchronizing Product Data on Cloud
    Our customers’ image databases are synchronized to their private collections on the Ximilar cloud. When you upload new products or images on your website, our AI automatically recognizes the fashion attributes and provides tags. There are two major benefits of synchronization. First, simple filtering or searching with fashion tags on your website. Second, personalized recommendations of your products similar to the users’ images. The synchronization periodicity is up to you. This way the visually similar results on your web are always up to date with your actual SKUs.

How Does Fashion Search Work?

The Fashion Search works as a customizable recommendation service allowing you to easily build your own fashion product discovery system. Imagine you are building a watch shop with product recommendations based on material, dial colour, and type. You can add your custom tags and show customers products of specific colours and types.

Product similarity for watches

The main added value of the Fashion Search lies in the possibility of combining advanced automatic Fashion Tagging with Visual Search. The technology behind our Visual Search is complex. It contains more than a hundred deep-learning models and algorithms for the extraction of dominant colours and other features. It also allows advanced filtering of visually similar results based on user-provided attributes.

Besides bringing these things together, there’s more we implemented to make the Fashion Search an effective and reliable tool tailored to the needs of fashion e-commerce. See how it works in our public demo.

Advanced Tagging with Object Detection

Object Detection is an indispensable tool for processing complex pictures with many items to recognize and tag. The service detects all fashion-related items on the picture and then provides tags for individual items.

We work with seven Top Categories (or types) of apparel: Clothing, Footwear, Watches, Bags, Accessories, Jewellery, and Underwear. Our system classifies the products from these categories into a hundred different categories, subcategories, and features with about 600 labels.

Customization of Fashion Search with Profiles

[Gabrielle Henderson, Unsplash]

The most common questions we get from our customers in fashion are “What if I need something that is not included in the Fashion Tagging? and “What if I need to rename or translate the labels? “.

We always welcome customization and Fashion Search is not an exception. It enables our users to create a fully customized environment. Adding a new feature requires only a few hundred example images per tag for the system to recognize them automatically. Also, it is natural that everyone has their own taxonomy and preferred language. Even the naming can be different, such as Jacket vs. Coat in the USA and the UK. Renaming and changing the category structure is done using a custom fashion profile according to your needs.

Our attitude is that fashion wouldn’t be fashion without personalization.

Also, for specialized sellers, the requirements for the richness of labels are much higher if they want to bring the best product discovery experience. For example, a shop specializing in luxury jewellery needs to rename the tags for Colour (gold, golden, yellow gold, gold-coloured, rose gold) or add exclusive features and tags, such as the colour of the gemstones. If you like this approach, don´t hesitate to contact us.

Upgraded Fashion Taxonomy

Our fashion annotation team focuses on widening fashion taxonomy and training new machine learning algorithms to recognize new features daily. Categories such as Clothing, Accessories or Footwear are constantly growing, while others are being made. For instance, we recently added a new recognition model for Embellishment (e.g. embroidery or studs), rich sub-categories of Dresses, and new categories of Jewellery and Watches. In the last couple of months, we added over 50 new categories and attributes, improving the precision of tagging results.

We have a lot of discussions about what’s next to explore and expand – and that is where the customer’s ideas come into play. Check if you can find your categories in our Fashion Taxonomy.

Download the Fashion Taxonomy Sheet Here

Advanced Analysis and Sorting of Fashion Images

Some customers need to obtain more detailed information about their images. Features such as the presence of a human model, background quality, or perspective can be used for filtering and sorting. To enable deeper image analysis, we built a specialized Meta Tagging model, that can be used to:

  • identify if there’s a person in the picture,
  • filter images with white background,
  • sort product images by the view,
  • and many more.

This Visual AI model enables you to manage the display of product images and build a smoother customer experience. More importantly, it makes your web easier to understand and navigate with features such as:

  • the first photo in the product list is always with/without a person,
  • the next photos are sorted by perspective,
  • the last photo is the detail, focused on the material, colour, or pattern,
  • all images with low quality are filtered out,
  • and so on.

This way, the visitors will always know what to expect and where to click to find what they’re looking for. For instance, it is important to display jewellery in standardised high-quality images with details, but also on the human body. Seeing a ring or a necklace on a hand or neck helps customers understand the fit and size of the jewellery, as well as the colours of materials and gems in natural light.

Product page with customer’s inputs at Shein

Community content also makes e-shopping sites more personal and engaging for visitors. A good example is Shein, where users can upload pictures along with their reviews of the product. This strategy definitely adds up to the trustworthiness and reliability of the seller.

How We Work with Data

Working with big specialized databases requires caution, patience, and a specific skill set. Our team of fashion annotators puts thousands of hours into building high-quality datasets with relevant labels and objects. To make their work more efficient and time well-spent, we developed our own image Annotation Tool, enhancing the functionalities of our App. It is the main reason why we deliver new features quickly, and it is available to our customers as well.

One of Ximilar’s greatest strengths is the detail-oriented yet efficient management of enormous databases of millions of pictures.

Each image shown to the model in training is verified numerous times by multiple annotators. Then, an optimisation mechanism makes sure we achieve the highest accuracy with the smallest amount of training images possible. After that, everything is evaluated on a broad test dataset. As a result, we only deploy models, that are inspected by Machine Learning specialists, and precise in their predictions.

Never-Ending Innovations

What else? There have been some significant improvements to our speed performance. Cooperating with the Intel AI team, we did a lot of work on our backend side so you can query the results in milliseconds. We firmly believe that our Fashion AI services are some of the best in the market. Covering a variety of items from Clothing, Footwear, or Accessories, our Fashion AI works with a very rich taxonomy. To sum up, we are now ready to focus on more new features. For example, mining relevant keywords from textual metadata, enhancing and upscaling product images with the Super-Resolution model, model explainability, or background removal, but also on better and richer customer experience.

Application of Background removal service on image

Would you like to discuss your custom solution or ask anything? Read our story, check the pricing, or let’s talk!

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The Year 2020 at Ximilar https://www.ximilar.com/blog/the-year-2020-at-ximilar/ Tue, 12 Jan 2021 09:22:52 +0000 https://www.ximilar.com/?p=2011 Overview of the challenging year 2020. Covid-19, bigger team and more customers. Our technologies are helping more and more companies.

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Well, the year 2020 will stay a long time in our memory. For many, it was a sad year. For those in the online business, the Covid-19, aka Coronavirus, accelerated online shopping like nothing before. Smart retail becomes an even more critical part of a successful company. And Ximilar team was working harder than before to help with that.

Object Detection — Customized

For some of our customers, we already had the opportunity to train custom detection models. However, we decided to integrate this into the popular app.ximilar.com and not only keep it in our Annotate tool.

The biggest news is that we re-implemented a new architecture for Object Detection (called CenterNet), using TensorFlow 2+. And made it open-source for you guys out there. The system is more scalable and faster than before, and we still have multiple ideas for further improvements. Creating detection models has so far a long and painful process, so we believe that you will love the new service as it significantly speeds up the workflow. We’ve also cloned favourite features from Image Recognition, so you can now configure your custom image augmentation settings, model versioning, download models for offline usage, evaluation on an independent test dataset, connect it to the flow, and more. It was a ride! More in the video ↓

Flows

Flows are a service that simplifies the process of building computer vision systems.

We spent a lot of man-hours on this feature. Ximilar is the only system in the market that can connect visual AI models to complex workflow without any coding. Before we had Flows, it was really painful to connect individual recognition or detection models into one API service. Now it is effortless, and we again have more features coming.

Flows are incredibly powerful with endless possibilities. Saving the costs of expensive machine learning development. You should see the happy faces of Flows users.

Imagine that you are creating a car monitoring system over the parking place. You can create detection of parking spots and then analyze individual spots with image recognition models and decide if it is used or not. With Flows, you just connect several actions and the system is automatically deployed for you! This is something that takes a long time for a team of engineers to develop, but with Ximilar Flows, the entire process can be done in just minutes.

Fashion Tagging and Search Improved

With custom object detection and Flows, we were able to build one of the best systems for visual apparel analysis (Clothing, Underwear, Footwear, Jewelry, Watches, Accessories, Bags, Hats, Glasses, etc.). The entire system consists of a hundred models integrated into one flow. The system is also able to detect individual clothing items and can tell you more information about the background and particular view or detail. Ximilar is ready to create a custom profile for you with the customization of tag names. And not only that.

Because some of our customers have all of our three services for Fashion: Tagging, Similarity, and Visual Search, we have also created a full-featured Fashion Search which includes all of those 3. This could save you a lot of money and provide the fastest solution for your e-commerce outlet or mobile app.

Some use cases require image analysis on a deeper level. We call such a service META image analysis. That is great for automated decisions such as:

  • is there a person in the photo?
  • is the product dominant in the image?
  • what kind of background colour is there?
  • are there additional details of the item to see?
  • is this a front or a side view of the object in the photo?

Building a high-quality image tagging system for any other field is very effective on the Ximilar platform (real estate, stock photos, product categorization, etc). As an example, we have pre-built visual AI for home decor products right in the app.

New: Custom Image Similarity

Would you like to build a visual search engine for example for skincare products, but you don’t know how? Check out the web of our customer Skintory. We have taken this challenge to create Visual Search/Image Similarity as a service. So you can train custom similarity models and create visual product searches on click.

This could really change how we interact and search on retail sites. For most of the use cases, the generic similarity model trained on stock photos is not working as well as it could. So we took the opportunity to work on a service for the training of customized image similarity models with an integrated search engine.

That feature is still in BETA, and our AI team is working hard to deliver the best experience soon. If you would like to test this service, please contact us directly.

Multiple App Improvements

We have not abandoned all our now older services, such as Image Recognition. There are new features and improvements. The most visible additions are these:

Annotate

It is our internal image annotation system, which was released to the public at the beginning of the year 2020. It offers a workflow for teams (annotation jobs), multiple verifications of your image data, and more. If you are working on a large machine learning project that requires a balanced and high-quality dataset → ask us to show you Annotate. We are constantly working on improvements, so your team can deliver your final product faster with higher accuracy. Read about image annotation for teams.

Cooperations & Partnership

Thanks to Intel, our prediction system is running faster than ever. Our AI and Backend engineers work together with the Intel team (thank you, Ellen and Vishnu) on the optimization of machine learning models on the x86 architecture with OpenVINO. We changed the backend of our models from TF2 to OpenVINO and got a massive speed-up of performance. Now our entire fashion system is not only the most accurate but also the fastest one. Of course, you can build any other visual inspection application on top of the Ximilar Platform. We have published an in-depth behind the scenes.

In the middle of 2020, we also became a member of the NVIDIA Inception Program, which supports cutting-edge AI startups that are revolutionizing industries. We are looking forward to being active in the area, thanks to the Brno.AI platform, which supports companies and universities in Czechia.

Open Source Projects

Our tech team was active quite a lot in the open-source community. Implementing and publishing machine learning projects:

  • xCenterNet — fast object detection model
  • tf-image — image augmentation for TensorFlow that makes your model more robust
  • TF-metric-learning — distance metric learning library

Tutorial videos

Lastly, Ximilar released video tutorials for the Platform. With the support of JIC Brno. A first series of educational videos.

And more in 2021!

In the year of 2020, we have grown on all levels. We have more happy customers and a bigger team. It was not easy to manage everything during the early Covid-19 era. Some of us spent a lot of time at home office. Luckily, we have a great team that supports our idea of making machine learning and computer vision a pleasant and creative process.

We are working on improving stable services as well as creating new projects. There are many interesting topics that we plan to probe such as Custom similarity, Explainability/Interpretability, Regression from image, a combination of image and text data, a model for background removal, image super-resolution service, and many more. Stay tuned & healthy for next year at least!

If you have any ideas that you would love to have on the platform, then please let us know.

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