Semi-supervised Discriminant Hashing

Saehoon Kim, Seungjin Choi
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引用次数: 26

Abstract

Hashing refers to methods for embedding high dimensional data into a similarity-preserving low-dimensional Hamming space such that similar objects are indexed by binary codes whose Hamming distances are small. Learning hash functions from data has recently been recognized as a promising approach to approximate nearest neighbor search for high dimensional data. Most of ¡®learning to hash' methods resort to either unsupervised or supervised learning to determine hash functions. Recently semi-supervised learning approach was introduced in hashing where pair wise constraints (must link and cannot-link) using labeled data are leveraged while unlabeled data are used for regularization to avoid over-fitting. In this paper we base our semi-supervised hashing on linear discriminant analysis, where hash functions are learned such that labeled data are used to maximize the separability between binary codes associated with different classes while unlabeled data are used for regularization as well as for balancing condition and pair wise decor relation of bits. The resulting method is referred to as semi-supervised discriminant hashing (SSDH). Numerical experiments on MNIST and CIFAR-10 datasets demonstrate that our method outperforms existing methods, especially in the case of short binary codes.
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半监督判别哈希
哈希是指将高维数据嵌入到保持相似度的低维汉明空间中,使相似对象通过汉明距离较小的二进制代码进行索引的方法。从数据中学习哈希函数最近被认为是一种很有前途的方法来近似最近邻搜索高维数据。大多数“学习哈希”方法都采用无监督学习或监督学习来确定哈希函数。最近在哈希中引入了半监督学习方法,其中利用标记数据的成对约束(必须链接和不能链接),而使用未标记数据进行正则化以避免过拟合。在本文中,我们基于线性判别分析的半监督哈希,其中学习了哈希函数,使得标记数据用于最大化与不同类关联的二进制码之间的可分性,而未标记数据用于正则化以及平衡条件和对装饰关系。由此产生的方法被称为半监督判别散列(SSDH)。在MNIST和CIFAR-10数据集上的数值实验表明,我们的方法优于现有的方法,特别是在短二进制码的情况下。
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