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Attention-Aware Deep Adversarial Hashing for Cross-Modal Retrieval

机译:用于跨模态检索的注意感知深度对抗式哈希

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Due to the rapid growth of multi-modal data, hashing methods for cross-modal retrieval have received considerable attention. However, finding content similarities between different modalities of data is still challenging due to an existing heterogeneity gap. To further address this problem, we propose an adversarial hashing network with an attention mechanism to enhance the measurement of content similarities by selectively focusing on the informative parts of multi-modal data. The proposed new deep adversarial network consists of three building blocks: (1) the feature learning module to obtain the feature representations; (2) the attention module to generate an attention mask, which is used to divide the feature representations into the attended and unattended feature representations; and (3) the hashing module to learn hash functions that preserve the similarities between different modalities. In our framework, the attention and hashing modules are trained in an adversarial way: the attention module attempts to make the hashing module unable to preserve the similarities of multi-modal data w.r.t. the unattended feature representations, while the hashing module aims to preserve the similarities of multi-modal data w.r.t. the attended and unattended feature representations. Extensive evaluations on several benchmark datasets demonstrate that the proposed method brings substantial improvements over other state-of-the-art cross-modal hashing methods.
机译:由于多模式数据的快速增长,用于跨模式检索的哈希方法已受到相当多的关注。但是,由于存在异质性差距,在不同数据模式之间寻找内容相似性仍然具有挑战性。为了进一步解决这个问题,我们提出了一种具有注意机制的对抗性哈希网络,可以通过选择性地关注多模式数据的信息部分来增强内容相似性的度量。拟议的新的深度对抗网络包括三个构建块:(1)特征学习模块,用于获取特征表示; (2)注意模块生成注意遮罩,用于将特征表示划分为有人值守和无人值守表示; (3)哈希模块,学习保持不同模态之间相似性的哈希函数。在我们的框架中,注意力和散列模块以对抗性的方式进行训练:注意力模块试图使散列模块无法保留多模式数据的相似性。散列模块的目的是保留多模态数据的相似性。有人照看和无人照看的要素表示。对几个基准数据集的广泛评估表明,与其他最新的交叉模式哈希方法相比,该方法带来了实质性的改进。

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