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QuRe: Query-Relevant Retrieval through Hard Negative Sampling in Composed Image Retrieval
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本文提出一种基于硬负样本采样的查询相关检索(QuRe)方法,优化奖励模型目标以减少错误否定,并创建新数据集HP-FashionIQ评估CIR模型与人类满意度的匹配度,实验表明QuRe在FashionIQ和CIRR数据集上表现优异。

arXiv:2507.12416v1 Announce Type: cross Abstract: Composed Image Retrieval (CIR) retrieves relevant images based on a reference image and accompanying text describing desired modifications. However, existing CIR methods only focus on retrieving the target image and disregard the relevance of other images. This limitation arises because most methods employing contrastive learning-which treats the target image as positive and all other images in the batch as negatives-can inadvertently include false negatives. This may result in retrieving irrelevant images, reducing user satisfaction even when the target image is retrieved. To address this issue, we propose Query-Relevant Retrieval through Hard Negative Sampling (QuRe), which optimizes a reward model objective to reduce false negatives. Additionally, we introduce a hard negative sampling strategy that selects images positioned between two steep drops in relevance scores following the target image, to effectively filter false negatives. In order to evaluate CIR models on their alignment with human satisfaction, we create Human-Preference FashionIQ (HP-FashionIQ), a new dataset that explicitly captures user preferences beyond target retrieval. Extensive experiments demonstrate that QuRe achieves state-of-the-art performance on FashionIQ and CIRR datasets while exhibiting the strongest alignment with human preferences on the HP-FashionIQ dataset. The source code is available at https://github.com/jackwaky/QuRe.

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图像检索 硬负样本采样 用户体验
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