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Focusing on Detail: Deep Hashing Based on Multiple Region Details (Student Abstract)

机译:专注于细节:基于多个区域细节的深度哈希(学生摘要)

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Fast retrieval efficiency and high performance hashing, which aims to convert multimedia data into a set of short binary codes while preserving the similarity of the original data, has been widely studied in recent years. Majority of the existing deep supervised hashing methods only utilize the semantics of a whole image in learning hash codes, but ignore the local image details, which are important in hash learning. To fully utilize the detailed information, we propose a novel deep multi-region hashing (DMRH), which learns hash codes from local regions, and in which the final hash codes of the image are obtained by fusing the local hash codes corresponding to local regions. In addition, we propose a self-similarity loss term to address the imbalance problem (i.e., the number of dissimilar pairs is significantly more than that of the similar ones) of methods based on pairwise similarity.
机译:快速检索效率和高性能散列,旨在将多媒体数据转换为一组短二进制代码,同时保持原始数据的相似性,近年来已被广泛研究。 大多数现有的深度监督散列方法只能利用整个图像的语义,在学习哈希代码中,但忽略了本地图像细节,这在哈希学习中很重要。 为了充分利用详细信息,我们提出了一种新的深度多区域散列(DMRH),其从本地区域学习哈希代码,并且通过融合与当地区域对应的局部哈希代码来获得图像的最终散列码 。 此外,我们提出了一种自我相似性损失术语来解决不平衡问题(即,不同的对数量大于基于成对相似性的方法的方法。

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