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首页> 外文期刊>Journal of visual communication & image representation >Adaptive weight multi-channel center similar deep hashing
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Adaptive weight multi-channel center similar deep hashing

机译:自适应权重多通道中心,类似深度散列

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To increase the richness of the extracted text modality feature information and deeply explore the semantic similarity between the modalities. In this paper, we propose a novel method, named adaptive weight multi-channel center similar deep hashing (AMCDH). The algorithm first utilizes three channels with different configurations to extract feature information from the text modality; and then adds them according to the learned weight ratio to increase the richness of the information. We also introduce the Jaccard coefficient to measure the semantic similarity level between modalities from 0 to 1, and utilize it as the penalty coefficient of the cross-entropy loss function to increase its role in backpropagation. Besides, we propose a method of constructing center similarity, which makes the hash codes of similar data pairs close to the same center point, and dissimilar data pairs are scattered at different center points to generate high-quality hash codes. Extensive experimental evaluations on four benchmark datasets show that the performance of our proposed model AMCDH is significantly better than other competing baselines. The code can be obtained from https://github.com/DaveLiu6/AMCDH.git.
机译:增加提取的文本情态特征信息的丰富度,深入挖掘模态之间的语义相似性。在本文中,我们提出了一种新的方法,称为自适应权重多通道中心相似深度哈希(AMCDH)。该算法首先利用三个不同配置的通道从文本模态中提取特征信息;然后根据学习到的权重比将它们相加,以增加信息的丰富性。我们还引入了Jaccard系数来测量从0到1的模态之间的语义相似性水平,并将其用作交叉熵损失函数的惩罚系数,以增加其在反向传播中的作用。此外,我们提出了一种中心相似度的构造方法,该方法使相似数据对的哈希码靠近同一中心点,并将不同的数据对分散在不同的中心点,以生成高质量的哈希码。对四个基准数据集的广泛实验评估表明,我们提出的模型AMCDH的性能明显优于其他竞争基线。代码可以从 https://github.com/DaveLiu6/AMCDH.git 获取。

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