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Bootstrap dual complementary hashing with semi-supervised re-ranking for image retrieval

机译:具有半监督重新排序的Bootstrap双互补散列用于图像检索

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摘要

With the rapid growth of multimedia data on the Internet, content-based image retrieval becomes a key technique for the Internet development. Hashing methods are efficient and effective for image retrieval. Dual Complementary Hashing (DCH) is one such method, which uses multiple hash tables and has good performance. However, DCH utilizes wrongly hashed image pairs to train the following hash table and discards correctly hashed image pairs. Therefore, the number of image pairs utilized for training the following hash tables will decrease rapidly. Moreover, each hash function in a hash table of DCH is trained by correcting the errors caused by its preceding one instead of holistically considering errors made by all previous hash functions. These restrictions significantly reduce the training efficiency and the overall performance of DCH. In this paper, we propose a new hashing method for image retrieval, Bootstrap Dual Complementary Hashing with semi-supervised Re-ranking (BDCHR). It is a semi-supervised multi-hashing method consisting of two parts: bootstrap DCH and semi-supervised re-ranking. The first part relieves the restrictions of DCH while the second part further enhances the image retrieval performance. Experimental results show that BDCHR yields better performance than other state-of-the-art multi-hashing methods. (C) 2019 Elsevier B.V. All rights reserved.
机译:随着Internet上多媒体数据的快速增长,基于内容的图像检索已成为Internet发展的关键技术。散列方法对于图像检索是有效的。双互补哈希(DCH)就是这样一种方法,它使用多个哈希表并具有良好的性能。但是,DCH使用错误地散列的图像对来训练下面的哈希表,并正确丢弃散列的图像对。因此,用于训练以下哈希表的图像对的数量将迅速减少。而且,通过校正由DCH的前一个哈希函数引起的错误而不是从整体上考虑由所有先前的哈希函数造成的错误来训练DCH的哈希表中的每个哈希函数。这些限制大大降低了DCH的培训效率和整体性能。在本文中,我们提出了一种用于图像检索的新哈希方法,即具有半监督重排序的Bootstrap双互补哈希(BDCHR)。它是一种半监督的多哈希方法,由两部分组成:引导DCH和半监督的重排序。第一部分减轻了DCH的限制,而第二部分则进一步提高了图像检索性能。实验结果表明,BDCHR比其他最新的多哈希方法具有更好的性能。 (C)2019 Elsevier B.V.保留所有权利。

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