An NMF Perspective on Binary Hashing

L. Mukherjee, Sathya Ravi, V. Ithapu, Tyler Holmes, Vikas Singh
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引用次数: 15

Abstract

The pervasiveness of massive data repositories has led to much interest in efficient methods for indexing, search, and retrieval. For image data, a rapidly developing body of work for these applications shows impressive performance with methods that broadly fall under the umbrella term of Binary Hashing. Given a distance matrix, a binary hashing algorithm solves for a binary code for the given set of examples, whose Hamming distance nicely approximates the original distances. The formulation is non-convex -- so existing solutions adopt spectral relaxations or perform coordinate descent (or quantization) on a surrogate objective that is numerically more tractable. In this paper, we first derive an Augmented Lagrangian approach to optimize the standard binary Hashing objective (i.e.,maintain fidelity with a given distance matrix). With appropriate step sizes, we find that this scheme already yields results that match or substantially outperform state of the art methods on most benchmarks used in the literature. Then, to allow the model to scale to large datasets, we obtain an interesting reformulation of the binary hashing objective as a non negative matrix factorization. Later, this leads to a simple multiplicative updates algorithm -- whose parallelization properties are exploited to obtain a fast GPU based implementation. We give a probabilistic analysis of our initialization scheme and present a range of experiments to show that the method is simple to implement and competes favorably with available methods (both for optimization and generalization).
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二进制哈希的NMF视角
海量数据存储库的普及使得人们对高效的索引、搜索和检索方法产生了浓厚的兴趣。对于图像数据,这些应用程序的快速发展的工作主体显示了令人印象深刻的性能,这些方法大致属于二进制哈希的总称。给定距离矩阵,二进制哈希算法求解给定示例集的二进制代码,其汉明距离很好地近似于原始距离。该公式是非凸的,因此现有的解决方案采用谱松弛或在数字上更易于处理的替代目标上执行坐标下降(或量化)。在本文中,我们首先推导了一种增广拉格朗日方法来优化标准二进制哈希目标(即在给定距离矩阵下保持保真度)。通过适当的步长,我们发现该方案已经在文献中使用的大多数基准测试中产生匹配或实质上优于最先进方法的结果。然后,为了允许模型扩展到大型数据集,我们将二进制哈希目标重新表述为非负矩阵分解。后来,这导致了一个简单的乘法更新算法——其并行化特性被利用来获得一个快速的基于GPU的实现。我们对我们的初始化方案进行了概率分析,并提出了一系列实验,以表明该方法易于实现,并与现有方法(优化和泛化)竞争。
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