Learning compact binary codes via pairwise correlation reconstruction

Xiao-Jiao Mao, Yubin Yang, Ning Li
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Abstract

Due to the explosive growth of visual data and the raised urgent needs for more efficient nearest neighbor search methods, hashing methods have been widely studied in recent years. However, parameter optimization of the hash function in most available approaches is tightly coupled with the form of the function itself, which makes the optimization difficult and consequently affects the similarity preserving performance of hashing. To address this issue, we propose a novel pairwise correlation reconstruction framework for learning compact binary codes flexibly. Firstly, each data point is projected into a metric space and represented as a vector encoding the underlying local and global structure of the input space. The similarities of the data are then measured by the pairwise correlations of the learned vectors, which are represented as Euclidean distances. Afterwards, in order to preserve the similarities maximally, the optimal binary codes are learned by reconstructing the pairwise correlations. Experimental results are provided and analyzed on four commonly used benchmark datasets to demonstrate that the proposed method achieves the best nearest neighbor search performance comparing with the state-of-the-art methods.
学习紧凑的二进制代码通过两两相关重建
由于可视化数据的爆炸式增长以及对更高效的最近邻搜索方法的迫切需求,哈希方法近年来得到了广泛的研究。然而,在大多数可用的方法中,哈希函数的参数优化与函数本身的形式紧密耦合,这使得优化变得困难,从而影响了哈希的相似性保持性能。为了解决这个问题,我们提出了一种新的两两相关重构框架,用于灵活地学习紧凑二进制码。首先,将每个数据点投影到度量空间中,并表示为编码输入空间的底层局部和全局结构的向量。然后通过学习到的向量的两两相关性来测量数据的相似性,这被表示为欧几里得距离。然后,为了最大限度地保持相似性,通过重建两两相关来学习最优二进制码。在四种常用的基准数据集上给出了实验结果并进行了分析,结果表明,与现有方法相比,该方法具有最佳的最近邻搜索性能。
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