Litcius/Paper detail

Cross-Modal Retrieval with Heterogeneous Graph Embedding

Dapeng Chen, Min Wang, Haobin Chen, Lin Wu, Jing Qin, Wei Peng

2022Proceedings of the 30th ACM International Conference on Multimedia38 citationsDOI

Abstract

Conventional methods address the cross-modal retrieval problem by projecting the multi-modal data into a shared representation space. Such a strategy will inevitably lose the modality-specific information, leading to decreased retrieval accuracy. In this paper, we propose heterogeneous graph embeddings to preserve more abundant cross-modal information. The embedding from one modality will be compensated with the aggregated embeddings from the other modality. In particular, a self-denoising tree search is designed to reduce the "label noise" problem, making the heterogeneous neighborhood more semantically relevant. The dual-path aggregation tackles the "modality imbalance" problem, giving each sample comprehensive dual-modality information. The final heterogeneous graph embedding is obtained by feeding the aggregated dual-modality features to the cross-modal self-attention module. Experiments conducted on cross-modality person re-identification and image-text retrieval task validate the superiority and generality of the proposed method.

Topics & Concepts

Computer scienceModalModality (human–computer interaction)EmbeddingGraphGeneralityArtificial intelligenceDual (grammatical number)Theoretical computer sciencePattern recognition (psychology)Information retrievalPolymer chemistryLiteratureChemistryPsychotherapistArtPsychologyMultimodal Machine Learning ApplicationsAdvanced Image and Video Retrieval TechniquesVideo Surveillance and Tracking Methods