对手引导的非对称哈希跨模态检索

Wen Gu, Xiaoyan Gu, Jingzi Gu, B. Li, Zhi Xiong, Weiping Wang
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引用次数: 77

摘要

跨模态哈希在大规模的多模态检索任务中引起了广泛的关注。大多数哈希方法已经被提出用于跨模态检索。然而,这些方法对特征学习过程关注不够,不能充分保持各项对的高阶相关性和每项的多标签语义,从而降低了二进制码的质量。为了解决这些问题,在本文中,我们提出了一种新的深度跨模态哈希方法,称为对手引导非对称哈希(AGAH)。具体来说,它采用了一个对抗学习引导的多标签注意模块来增强特征学习部分,使其能够学习到判别特征表示并保持跨模态不变性。此外,为了生成能够充分保留所有项目的多标签语义的哈希码,我们提出了一种非对称哈希方法,该方法利用多标签二进制码映射,使哈希码具有多标签语义信息。此外,为了保证所有相似项对的相关度高于不相似项对,我们采用了新的三重边界约束和余弦量化技术来保持Hamming空间相似度。广泛的实证研究表明,AGAH优于几种最先进的跨模式检索方法。
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Adversary Guided Asymmetric Hashing for Cross-Modal Retrieval
Cross-modal hashing has attracted considerable attention for large-scale multimodal retrieval task. A majority of hashing methods have been proposed for cross-modal retrieval. However, these methods inadequately focus on feature learning process and cannot fully preserve higher-ranking correlation of various item pairs as well as the multi-label semantics of each item, so that the quality of binary codes may be downgraded. To tackle these problems, in this paper, we propose a novel deep cross-modal hashing method, called Adversary Guided Asymmetric Hashing (AGAH). Specifically, it employs an adversarial learning guided multi-label attention module to enhance the feature learning part which can learn discriminative feature representations and keep the cross-modal invariability. Furthermore, in order to generate hash codes which can fully preserve the multi-label semantics of all items, we propose an asymmetric hashing method which utilizes a multi-label binary code map that can equip the hash codes with multi-label semantic information. In addition, to ensure higher-ranking correlation of all similar item pairs than those of dissimilar ones, we adopt a new triplet-margin constraint and a cosine quantization technique for Hamming space similarity preservation. Extensive empirical studies show that AGAH outperforms several state-of-the-art methods for cross-modal retrieval.
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