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Learning to Hash with Partial Tags: Exploring Correlation between Tags and Hashing Bits for Large Scale Image Retrieval

机译:学习使用部分标签进行哈希处理:探索标签和哈希位之间的相关性以进行大规模图像检索

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Similarity search is an important technique in many large scale vision applications. Hashing approach becomes popular for similarity search due to its computational and memory efficiency. Recently, it has been shown that the hashing quality could be improved by combining supervised information, e.g. semantic tags/labels, into hashing function learning. However, tag information is not fully exploited in existing un-supervised and supervised hashing methods especially when only partial tags are available. This paper proposes a novel semi-supervised tag hashing (SSTH) approach that fully incorporates tag information into learning effective hashing function by exploring the correlation between tags and hashing bits. The hashing function is learned in a unified learning framework by simultaneously ensuring the tag consistency and preserving the similarities between image examples. An iterative coordinate descent algorithm is designed as the optimization procedure. Furthermore, we improve the effectiveness of hashing function through orthogonal transformation by minimizing the quantization error. Extensive experiments on two large scale image datasets demonstrate the superior performance of the proposed approach over several state-of-the-art hashing methods.
机译:在许多大型视觉应用中,相似性搜索是一项重要技术。哈希方法由于其计算和存储效率而在相似性搜索中变得很流行。最近,已经表明,可以通过组合监督信息来提高哈希质量。语义标签/标签,进入哈希函数学习。但是,在现有的无监督和有监督的哈希方法中,标签信息无法得到充分利用,尤其是当只有部分标签可用时。本文提出了一种新颖的半监督标签哈希(SSTH)方法,该方法通过探索标签与哈希位之间的相关性,将标签信息完全纳入学习有效的哈希功能中。通过同时确保标签一致性并保留图像示例之间的相似性,可以在统一的学习框架中学习哈希功能。设计了迭代坐标下降算法作为优化过程。此外,我们通过使量化误差最小化,通过正交变换提高了哈希函数的有效性。在两个大型图像数据集上的大量实验证明了该方法优于几种最新的哈希方法的性能。

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