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Google's AI try-on feature for clothes now works with just a selfie

Google’s AI Try-On Feature Simplifies Clothing Shopping With Selfies

What Changed and Why Now

Google has updated its AI try-on feature, allowing users to upload just a selfie instead of a full-body photo to virtually try on clothing. This shift, announced recently, leverages the Gemini 2.5 Flash Image model, known as Nano Banana, to create a full-body digital avatar from a single selfie. This enhancement aims to streamline the online shopping process, targeting a more user-friendly experience in an increasingly competitive e-commerce landscape.

How It Works (Mechanics)

The AI try-on feature utilizes advanced image generation technology to render clothing on a digital avatar. Users upload a selfie, select their typical clothing size, and the system generates several high-quality images showcasing how the items will fit. Google’s infrastructure integrates this capability with its Shopping Graph, allowing users to access the feature across Google Search, Shopping, and Images. The technology relies on diffusion-based image generation, trained on pairs of photos to understand variations in body types and fabric behavior.

What This Means for Teams (My Take)

For e-commerce teams, this feature reduces friction in the purchasing process. It lowers the barriers for users hesitant to upload full-body photos, potentially increasing engagement and conversion rates. Given the emphasis on user experience, companies should consider integrating similar technologies to stay competitive. However, they must also prepare for the operational demands of implementing and maintaining such advanced AI systems.

What Breaks / Hidden Costs / Open Questions

Several questions arise from this update. First, how will Google monetize this feature? Will it lead to a higher dependency on Google’s ecosystem, locking businesses into its platforms? There are also potential privacy concerns, despite Google claiming not to store biometric data. Companies must assess the risks associated with integrating their inventory into Google’s Shopping Graph, as reliance on a single platform can create vulnerabilities.

My 6–12 Month Prediction

In the next six to twelve months, expect to see a surge in similar virtual try-on features across competing platforms. Brands will likely adopt or enhance their AI capabilities to match Google’s offering, leading to increased investments in generative AI technologies. This trend may push retailers to prioritize user-generated content and digital personalization, further altering online shopping dynamics.

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