The paper creates FISD, a controlled benchmark for composed image retrieval that removes query ambiguity via generative models, and proposes a multi-round agentic evaluation to assess models in interactive settings.
Im- proving composed image retrieval via contrastive learn- ing with scaling positives and negatives
2 Pith papers cite this work. Polarity classification is still indexing.
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UNVERDICTED 2representative citing papers
GeCo uses a cGAN-based Complementary Item Generation Model to create target fashion images from seed items and feeds them into a compatibility model for better top-bottom retrieval on three datasets, plus releases a new Fashion Taobao dataset.
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A Sanity Check on Composed Image Retrieval
The paper creates FISD, a controlled benchmark for composed image retrieval that removes query ambiguity via generative models, and proposes a multi-round agentic evaluation to assess models in interactive settings.
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Fashion Image-to-Image Translation for Complementary Item Retrieval
GeCo uses a cGAN-based Complementary Item Generation Model to create target fashion images from seed items and feeds them into a compatibility model for better top-bottom retrieval on three datasets, plus releases a new Fashion Taobao dataset.