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Deep multiscale divergence hashing for image retrieval

机译:用于图像检索的深度多尺度分歧

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Image retrieval based on deep learning of hash has made great progress. The hash method increases retrieval speed greatly while saving storage space. However, some problems exist, such as the distinctiveness of image feature still needs to be improved and some image features are still redundant. We propose a new deep learning to hash method, namely, deep multi-scale divergence hashing, which provides a high diversity and compact image feature for image retrieval. The discriminative features from deep neural networks are identified by the importance criterion in network pruning techniques and the feature redundancy is reduced. Then, the selected features across different layers are fused in a certain proportion to increase the diversity of features for image retrieval. We also present a hybrid loss function in hash space, which consists of the weighted pairwise cross-entropy loss function and the KL-divergence. It tends to minimize the hamming distance between similar images and maximize the hamming distance between different images, which helps improve the accuracy. Massive experimental results show that our method achieves better feature distinguishability and more advanced image retrieval accuracy, and surpasses HashNet by 11.46%, 7.58%, and 13.86% on MS COCO, NUS-WIDE, and CIFAR-10 datasets, respectively. (C) 2021 SPIE and IS&T
机译:基于深度学习的图像检索取得了很大进展。散列方法在节省存储空间时大大提高了检索速度。然而,存在一些问题,例如需要改善图像特征的独特性,并且一些图像特征仍然是冗余的。我们提出了一个新的深学习散列法,即深的多尺度发散散列,它提供的图像检索高多样性和紧凑的图像特征。深度神经网络的鉴别特征是通过网络修剪技术的重要性标准来识别,并且减少了特征冗余。然后,在不同的层的选择的特征融合以一定比例增加的功能多样性的图像检索。我们还在散列空间中呈现混合丢失功能,由加权成对跨熵损失函数和KL发散组成。它倾向于最小化类似图像之间的汉明距离,并最大化不同图像之间的汉明距离,这有助于提高精度。大规模的实验结果表明,我们的方法通过分别11.46%,7.58%,和在MS COCO,NUS-WIDE 13.86%,和CIFAR-10的数据集,以达到更好的特征可区分和更先进的图像检索的准确性,并超过HashNet。 (c)2021个SPIE和IS&T

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