监督增量哈希

B. Ozdemir, Mahyar Najibi, L. Davis
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引用次数: 2

摘要

我们提出了一种增量策略,用于大规模图像搜索的核学习哈希函数。我们的方法基于两阶段分类框架,将二进制代码作为特征空间和语义空间之间的中间变量。在分类的第一阶段,二值码被一组二值支持向量机视为类标记;每个对应一个比特。在第二阶段,二进制码成为多类支持向量机的输入空间。哈希函数通过一种高效的算法来学习,其中通过循环坐标下降来解决寻找最优二进制码的np困难问题,并以并行增量方式训练支持向量机。对于诸如从先前未见过的类中添加图像之类的修改,我们描述了一个增量过程,用于有效和高效地更新先前的散列函数。在三个大规模图像数据集上的实验证明了所提出的哈希方法,监督增量哈希(SIH),比最先进的监督哈希方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervised Incremental Hashing
We propose an incremental strategy for learning hash functions with kernels for large-scale image search. Our method is based on a two-stage classification framework that treats binary codes as intermediate variables between the feature space and the semantic space. In the first stage of classification, binary codes are considered as class labels by a set of binary SVMs; each corresponds to one bit. In the second stage, binary codes become the input space of a multi-class SVM. Hash functions are learned by an efficient algorithm where the NP-hard problem of finding optimal binary codes is solved via cyclic coordinate descent and SVMs are trained in a parallelized incremental manner. For modifications like adding images from a previously unseen class, we describe an incremental procedure for effective and efficient updates to the previous hash functions. Experiments on three large-scale image datasets demonstrate the effectiveness of the proposed hashing method, Supervised Incremental Hashing (SIH), over the state-of-the-art supervised hashing methods.
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