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Semi-discrete matrix factorization for cross-modal hashing

机译:跨模态散列的半离散矩阵分解

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In view of the challenge that cross-modal hashing often encounters quantization loss due to hashing constraint relaxation, this work proposes a neat and innovative cross-modal similarity search strategy, termed as Semi-discrete Matrix Factorization Hashing (S-DMFH), which can directly extract the discrete hash representation shared by all modalities without any relaxation or intermediate variables. Meanwhile, S-DMFH fully leverages the category information to sharpen the discrimination ability of the learned hash representation. Furthermore, a linear embedding is constructed to map the data kernel space into the latent Hamming space, and also provides a directly usable hash function for out-of-sample data. Finally, an efficient iterative algorithm is designed by means of Stiefel manifold constraint to learn discrete hash representation directly, so as to reduce the quantization loss. The experimental results show its superiority over the current cross-modal hashing method.
机译:鉴于跨模型散列经常遇到量化损失由于散列约束放松而遇到量化损失,这项工作提出了一种整洁而创新的跨模型相似性搜索策略,称为半离散矩阵分解散列(S-DMFH),可以直接提取由所有模式共享的离散哈希表示,没有任何放松或中间变量。同时,S-DMFH充分利用类别信息来锐化学习哈希代表的歧视能力。此外,构造线性嵌入以将数据内核空间映射到潜伏的汉明空间,并且还提供用于超出样本数据的可直接可用的哈希函数。最后,通过Stiefel歧管约束设计了一种高效的迭代算法,以直接学习离散哈希表示,从而降低量化损耗。实验结果表明其在目前的跨模态散列方法上的优越。

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