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Identity-Aware Textual-Visual Matching with Latent Co-attention

About

Textual-visual matching aims at measuring similarities between sentence descriptions and images. Most existing methods tackle this problem without effectively utilizing identity-level annotations. In this paper, we propose an identity-aware two-stage framework for the textual-visual matching problem. Our stage-1 CNN-LSTM network learns to embed cross-modal features with a novel Cross-Modal Cross-Entropy (CMCE) loss. The stage-1 network is able to efficiently screen easy incorrect matchings and also provide initial training point for the stage-2 training. The stage-2 CNN-LSTM network refines the matching results with a latent co-attention mechanism. The spatial attention relates each word with corresponding image regions while the latent semantic attention aligns different sentence structures to make the matching results more robust to sentence structure variations. Extensive experiments on three datasets with identity-level annotations show that our framework outperforms state-of-the-art approaches by large margins.

Shuang Li, Tong Xiao, Hongsheng Li, Wei Yang, Xiaogang Wang• 2017

Related benchmarks

TaskDatasetResultRank
Text-based Person SearchCUHK-PEDES (test)
Rank-125.94
142
Text-to-Image RetrievalCUHK-PEDES (test)
Recall@125.94
96
Person SearchCUHK-PEDES (test)
Recall@155.97
47
Text-to-image Person Re-identificationCUHK-PEDES
Rank-125.94
34
Cross-modal Person Re-identificationCUHK-PEDES (test)
Rank@125.94
24
Fine-grained Text-to-Image RetrievalFlowers (test)
AP@5070.1
13
Fine-grained Image-to-Text RetrievalCUB (test)
R@161.5
13
Fine-grained Image-to-Text RetrievalFlowers (test)
R@168.4
13
Fine-grained Text-to-Image RetrievalCUB (test)
AP@5057.6
13
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