MSSPQ: Multiple Semantic Structure-Preserving Quantization for Cross-Modal Retrieval

Lei Zhu, Liewu Cai, Jiayu Song, Xinghui Zhu, Chengyuan Zhang, Shichao Zhang
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引用次数: 3

Abstract

Cross-modal hashing is a hot issue in the multimedia community, which is to generate compact hash code from multimedia content for efficient cross-modal search. Two challenges, i.e., (1) How to efficiently enhance cross-modal semantic mining is essential for cross-modal hash code learning, and (2) How to combine multiple semantic correlations learning to improve the semantic similarity preserving, cannot be ignored. To this end, this paper proposed a novel end-to-end cross-modal hashing approach, named Multiple Semantic Structure-Preserving Quantization (MSSPQ) that is to integrate deep hashing model with multiple semantic correlation learning to boost hash learning performance. The multiple semantic correlation learning consists of inter-modal and intra-modal pairwise correlation learning and Cosine correlation learning, which can comprehensively capture cross-modal consistent semantics and realize semantic similarity preserving. Extensive experiments are conducted on three multimedia datasets, which confirms that the proposed method outperforms the baselines.
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跨模态检索的多语义结构保持量化
跨模态哈希是多媒体界研究的热点问题之一,它是利用多媒体内容生成紧凑的哈希码以实现高效的跨模态搜索。如何有效地增强跨模态语义挖掘是跨模态哈希码学习的关键,以及如何结合多个语义关联学习来提高语义相似度保持是两个不容忽视的挑战。为此,本文提出了一种新的端到端跨模态哈希方法——多语义结构保持量化(Multiple Semantic Structure-Preserving quanti量化,MSSPQ),该方法将深度哈希模型与多语义相关学习相结合,以提高哈希学习性能。多语义相关学习包括模态间和模态内两两相关学习和余弦相关学习,可以全面捕获跨模态一致语义,实现语义相似度保持。在三个多媒体数据集上进行了大量的实验,证实了该方法优于基线。
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