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Fast low rank representation based spatial pyramid matching for image classification

机译:基于快速低秩表示的空间金字塔匹配用于图像分类

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摘要

Spatial Pyramid Matching (SPM) and its variants have achieved a lot of success in image classification. The main difference among them is their encoding schemes. For example, ScSPM incorporates Sparse Code (SC) instead of Vector Quantization (VQ) into the framework of SPM. Although the methods achieve a higher recognition rate than the traditional SPM, they consume more time to encode the local descriptors extracted from the image. In this paper, we propose using Low Rank Representation (LRR) to encode the descriptors under the framework of SPM. Different from SC, LRR considers the group effect among data points instead of sparsity. Benefiting from this property, the proposed method (i.e., LrrSPM) can offer a better performance. To further improve the generalizability and robustness, we reformulate the rank-minimization problem as a truncated projection problem. Extensive experimental studies show that LrrSPM is more efficient than its counterparts (e.g., ScSPM) while achieving competitive recognition rates on nine image data sets. (C) 2015 Elsevier B.V. All rights reserved.
机译:空间金字塔匹配(SPM)及其变体在图像分类中取得了很多成功。它们之间的主要区别在于它们的编码方案。例如,ScSPM将稀疏代码(SC)而不是矢量量化(VQ)合并到SPM的框架中。尽管这些方法比传统的SPM可获得更高的识别率,但是它们会花费更多的时间来编码从图像中提取的本地描述符。在本文中,我们建议在SPM框架下使用低秩表示(LRR)来对描述符进行编码。与SC不同,LRR考虑数据点之间的组效应而不是稀疏性。受益于此属性,所提出的方法(即LrrSPM)可以提供更好的性能。为了进一步提高泛化性和鲁棒性,我们将秩最小化问题重新构造为截断的投影问题。广泛的实验研究表明,LrrSPM在9个图像数据集上获得竞争识别率的同时,比其同类产品(例如ScSPM)更有效。 (C)2015 Elsevier B.V.保留所有权利。

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