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Iterative Quantization: A Procrustean Approach to Learning Binary Codes for Large-Scale Image Retrieval

机译:迭代量化:一种学习大型图像检索二进制代码的方法

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摘要

This paper addresses the problem of learning similarity-preserving binary codes for efficient similarity search in large-scale image collections. We formulate this problem in terms of finding a rotation of zero-centered data so as to minimize the quantization error of mapping this data to the vertices of a zero-centered binary hypercube, and propose a simple and efficient alternating minimization algorithm to accomplish this task. This algorithm, dubbed iterative quantization (ITQ), has connections to multiclass spectral clustering and to the orthogonal Procrustes problem, and it can be used both with unsupervised data embeddings such as PCA and supervised embeddings such as canonical correlation analysis (CCA). The resulting binary codes significantly outperform several other state-of-the-art methods. We also show that further performance improvements can result from transforming the data with a nonlinear kernel mapping prior to PCA or CCA. Finally, we demonstrate an application of ITQ to learning binary attributes or "classemes" on the ImageNet data set.
机译:本文解决了在大型图像集合中学习保留相似性的二进制代码以进行有效相似性搜索的问题。我们通过寻找零中心数据的旋转来表达此问题,以最小化将数据映射到零中心二进制超立方体的顶点的量化误差,并提出一种简单有效的交替最小化算法来完成此任务。该算法被称为迭代量化(ITQ),与多类频谱聚类和正交Procrustes问题有关,并且可以与无监督数据嵌入(例如PCA)和有监督嵌入(例如规范相关分析(CCA))一起使用。生成的二进制代码明显优于其他几种最新方法。我们还表明,在PCA或CCA之前使用非线性内核映射转换数据可以进一步提高性能。最后,我们演示了ITQ在ImageNet数据集上学习二进制属性或“类”的应用。

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