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TEMA: Anchor the Image, Follow the Text for Multi-Modification Composed Image Retrieval

About

Composed Image Retrieval (CIR) is an important image retrieval paradigm that enables users to retrieve a target image using a multimodal query that consists of a reference image and modification text. Although research on CIR has made significant progress, prevailing setups still rely simple modification texts that typically cover only a limited range of salient changes, which induces two limitations highly relevant to practical applications, namely Insufficient Entity Coverage and Clause-Entity Misalignment. In order to address these issues and bring CIR closer to real-world use, we construct two instruction-rich multi-modification datasets, M-FashionIQ and M-CIRR. In addition, we propose TEMA, the Text-oriented Entity Mapping Architecture, which is the first CIR framework designed for multi-modification while also accommodating simple modifications. Extensive experiments on four benchmark datasets demonstrate that TEMA's superiority in both original and multi-modification scenarios, while maintaining an optimal balance between retrieval accuracy and computational efficiency. Our codes and constructed multi-modification dataset (M-FashionIQ and M-CIRR) are available at https://github.com/lee-zixu/ACL26-TEMA/.

Zixu Li, Yupeng Hu, Zhiheng Fu, Zhiwei Chen, Yongqi Li, Liqiang Nie• 2026

Related benchmarks

TaskDatasetResultRank
Composed Image RetrievalFashionIQ (val)
Average Recall@1053.02
601
Composed Image RetrievalFashion-IQ--
129
Composed Image Retrieval (Image-Text to Image)CIRR--
128
Composed Image RetrievalCIRR (val)
Recall@149.15
22
Composed Image RetrievalM-FashionIQ
Dresses Recall@1045.74
11
Composed Image RetrievalM-CIRR
Recall@145.29
8
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