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Deep Multiscale Fusion Hashing for Cross-Modal Retrieval

机译:跨模型检索的深层多尺度融合散列

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摘要

Owing to the rapid development of deep learning and the high efficiency of hashing, hashing methods based on deep learning models have been extensively adopted in the area of cross-modal retrieval. In general, in existing deep model-based methods, modality-specific features play an important role during the hash learning. However, most existing methods only use the modality-specific features from the final fully connected layer, ignoring the semantic relevance among modality-specific features with different scales in multiple layers. To address this issue, in this study, we put forward an end-to-end deep hashing method called deep multiscale fusion hashing (DMFH) for cross-modal retrieval. For the proposed DMFH, we first design different network branches for two modalities and then adopt multiscale fusion models for each branch network to fuse the multiscale semantics, which can be used to explore the semantic relevance. Furthermore, the multi-fusion models also embed the multiscale semantics into the final hash codes, making the final hash codes more representative. In addition, the proposed DMFH can learn common hash codes directly without a relaxation, thereby avoiding a loss in accuracy during hash learning. Experimental results on three benchmark datasets prove the relative superiority of the proposed method.
机译:由于深层学习的快速发展和散列效率高,基于深度学习模型的散达方法在跨模型检索领域得到了广泛采用。通常,在现有的基于深度模型的方法中,模当特征在哈希学习期间发挥着重要作用。但是,大多数现有方法只使用来自最终完全连接的层的模态特定功能,忽略了多层中具有不同刻度的模式特定功能之间的语义相关性。为了解决这个问题,在这项研究中,我们提出了一种名为Deep MultiScale Fusion Hashing(DMFH)的端到端深度散列方法,用于交叉模态检索。对于提议的DMFH,我们首先为两个模态设计不同的网络分支,然后为每个分支网络采用多尺度融合模型,以保险为多尺度语义,可用于探索语义相关性。此外,多融合模型还将多尺度语义嵌入到最终哈希代码中,使最终哈希代码更具代表性。此外,所提出的DMFH可以直接学习公共哈希代码而没有放松,从而在哈希学习期间避免了准确性的损失。三个基准数据集的实验结果证明了所提出的方法的相对优势。

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