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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Graph regularized nonnegative sparse coding using incoherent dictionary for approximate nearest neighbor search
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Graph regularized nonnegative sparse coding using incoherent dictionary for approximate nearest neighbor search

机译:图表正规化非负面稀疏编码,用于近似最近邻南搜索的非联属词典

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摘要

In this paper, we consider the problem of approximate nearest neighbor (ANN) retrieval with the method of sparse coding, which is a promising tool of discovering compact representation of high-dimensional data. A new study, exploiting the indices of the active set of sparse coded data as retrieval code, exhibits an appealing ANN route. Here our work aims to enhance the method via considering its shortages of the local structure of the data. Our primary innovation is two-fold: We introduce the graph Laplacian regularization to preserve the local structure of the original data into reduced space, which is indeed beneficial to ANN. And we impose non-negativity constraints such that the retrieval code can more effectively reflect the neighborhood relation, thereby cutting down on unnecessary hash collision. To this end, we learn an incoherent dictionary with both rules via a novel formulation of sparse coding. The resulting optimization problem can be provided with an available solution by the widely used iterative scheme, where we resort to the feature-sign search algorithm in the sparse coding step and exploit the method that uses a Lagrange dual for dictionary learning step. Experimental results on publicly available image data sets manifest that the rules are positive to promote the classification and ANN accuracies. Compared with several state-of-the-art ANN techniques, our methods can achieve an interesting improvement in retrieval accuracy. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在本文中,我们考虑了利用稀疏编码方法检索近似邻(ANN)检索的问题,这是发现高维数据的紧凑表示的有希望的工具。一个新的研究,利用活动集的稀疏编码数据的指数作为检索代码,展示了一个吸引人的ANN路线。在这里,我们的工作旨在通过考虑数据的局部结构的短缺来增强方法。我们的主要创新是两倍:我们介绍了Graphian正则化,以将原始数据的本地结构保持在减少的空间,这确实有利于ANN。并且我们强加非消极性限制,使得检索代码可以更有效地反映邻域关系,从而降低不必要的哈希碰撞。为此,我们通过对稀疏编码的新型制定来学习一个不连贯的词典。由此产生的优化问题可以通过广泛使用的迭代方案提供可用的解决方案,其中我们在稀疏编码步骤中求出特征符号搜索算法并利用使用拉格朗日双重用于字典学习步骤的方法。实验结果对公开的图像数据集的表现出来,规则是促进分类和安准分的积极态度。与几种最先进的ANN技术相比,我们的方法可以实现检索准确性的有趣改善。 (c)2017 Elsevier Ltd.保留所有权利。

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