Effective conditioned and composed image retrieval combining CLIP-based features

IEEE Conference on Computer Vision and Pattern Recognition(2022)

Cited 48|Views45
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Abstract
Conditioned and composed image retrieval extend CBIR systems by combining a query image with an additional text that expresses the intent of the user, describing additional requests w.r.t. the visual content of the query image. This type of search is interesting for e-commerce applications, e.g. to develop interactive multimodal searches and chat-bots. In this demo, we present an interactive system based on a combiner network, trained using contrastive learning, that combines visual and textual features obtained from the OpenAI CLIP network to address conditioned CBIR. The system can be used to improve e-shop search engines. For example, considering the fashion domain it lets users search for dresses, shirts and toptees using a candidate start image and expressing some visual differences w.r.t. its visual con-tent, e.g. asking to change color, pattern or shape. The pro-posed network obtains state-of-the-art performance on the FashionIQ dataset and on the more recent CIRR dataset, showing its applicability to the fashion domain for conditioned retrieval, and to more generic content considering the more general task of composed image retrieval.
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Key words
CLIP-based features,composed image retrieval,CBIR systems,query image,additional text,additional requests w.r.t,visual content,interactive multimodal searches,interactive system,combiner network,OpenAI CLIP network,e-shop search engines,visual con-tent,conditioned retrieval,effective conditioned
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