A shopper lands on an eCommerce website and navigates to the search bar. She wants a red skirt, mid-length, with a fun, playful print. When she types in her search query for “red midi skirt,” the shopper receives dozens of relevant search results.
The building blocks of these search results (and even product recommendations) is image tagging (also known as fashion tagging).
Behind the scenes, a human tagged each of the product attributes by hand, a painful task when considering the hundreds or thousands of products uploaded on an eCommerce website per day.
Unfortunately, manual image tagging can take hours to complete and is prone to errors. For example, one human tagger might label the red skirt as “mid length skirt” and another human tagger might consider the skirt to be a “midi-skirt,” leading to inaccurate product data.
By building an artificial intelligence that understands fashion product attributes to correctly tag information, the process of image tagging can be improved.
In this blog post, we’ll walk you through:
- Image tagging 101
- What is good image tagging?
- How YesPlz image tagging works
- The impact of good fashion tagging
Image Tagging 101
Image tagging is the process of labeling product attributes on an image. A product attribute can include all different elements of a product, from a design style to color and material type. A single clothing category can have between 20 to 60 different attributes, which can take significant time to tag the attributes of a single product image.
If we look at the dress below, it would have about 9 different attributes including: dress category, neck design, material, and mood or occasion.
Traditionally, a member of the merchandising/eCommerce team is responsible for tagging. Designers and third-party vendors provide tagging information, and the in-house team is responsible for cleaning up and organizing the tags.
But, when information comes in from third parties, data can be inconsistent.
Depending on the vendor, they may have a different word for “lace” — and when you take into account the sheer volume of products that need to be tagged, this inconsistency creates a mess for fashion eCommerce.
Alternatively, the in-house merchandising experts may make tagging mistakes (we’re all human, after all).
Because of the complications of fashion tagging, some fashion eCommerce brands may skip it altogether to save time.
While it may be tempting to skip, without accurate image tagging, an eCommerce brand can’t:
- provide a superior search experience to shoppers
- categorize products
- create product descriptions
- improve search results
- offer more filtering options
- generate recommendations
- utilize powerful personalization tools
Image tagging contains crucial information that enriches a shopper’s online experience.
What makes a good image tagging solution?
There are hundreds of image tagging tools on the market, but they have different capabilities.
Even if they’re powered by artificial intelligence, it’s important to remember that artificial intelligence is only as good as the input data that trained the algorithm.
And, when artificial intelligence makes mistakes, fashion experts with a deep understanding of fashion should be the ones to review those mistakes.
Other considerations when choosing a fashion tagging tool are:
- the quality of the tags (are they accurate?)
- speed (slow tagging means more work for retailers)
Image Tagging In Action: Searching For A Shirtdress
A shopper wants to buy a shirtdress, defined as a women’s dress with a collar and buttons. She types in her search query and receives two sets of results:
Result #1: Search Results Without Image Tagging
The retailer relied on text tagging to create product tags, leading to mixed search results that include t-shirt dresses and men’s shirts–unrelated to the shopper’s original search query.
These search results highlight the importance of image tagging–a good image tagging tool would be able to identify the product type and product attributes.
Result #2: Search Results With Image Tagging
Next, the shopper searches for a shirtdress using a visual search filter. She receives the following search results, which are clear and accurate:
The difference between the two search results? Image tagging. In the second set of search results, YesPlz AI image tagging has correctly identified and tagged the product attributes, leading to accurate, robust search results.
Are you curious to know more about how YesPlz image tagging works? Let’s go behind the scenes and explore the YesPlz process and why we’re different from other solutions.
How Our Image Tagging Process Works
Here is the YesPlz process for ensuring accurate and fast image tagging:
Step 1: Before building our tool, we defined key fashion attributes that matter to shoppers through user interviews.
We started with user interviews and sat down with shoppers to define what key fashion attributes they care about the most.
We developed a clear understanding of the criteria for image tagging, leading to more accurate tagging from the start.
Step 2: We train the AI using image and text–then fashion experts correct the AI.
AI Training:
Through a combination of computer vision and Natural Language Process (NLP) technology, YesPlz AI is able to do deep image tagging which is accurate, fast, and seamless. In addition, our technology can identify product attributes even in all sorts of image types whether the clothing image is on or off a model, even if the image has a noisy background or is user-generated content.
Step 3: Fashion expert intervention:
AI will inevitably make incorrect inferences–but who is catching those mistakes?
We have fashion data annotators in-house that speak the language of fashion, leading to highly accurate tagging. The result of AI training with computer vision and NLP, combined with our data annotators from fashion backgrounds is fast, accurate image tagging for retailers.
Step 4: We provide data enrichment and image tagging output for retailers.
The last step in the YesPlz image tagging process is output that helps retailers make better decisions through data. We provide retailers with data enrichment using an API that allows retailers to easily receive image tagging information in an easy-to-use format that fits their preferences.
The impact of good fashion tagging
Good, quality fashion tagging is necessary to build out dynamic search and recommendations and hyper-personalization. While image tagging is very much “behind the scenes,” users are affected by poor image tagging when they receive mismatched search results or off-target recommendations.
Image tagging, when accurate and quick, can provide better quality data for fashion eCommerce, which can then be used for personalization.
But, the common objections we’ve seen to image tagging are:
1) it’s inaccurate
2) it takes too long
YesPlz AI is solving these problems for retailers by providing fast, accurate tagging. Our AI is trained to recognize product attributes in all types of pictures, even low-quality images, and is then reinforced with the input of fashion experts.
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