基于概率协同表示的模式分类方法

Sijia Cai, Lei Zhang, W. Zuo, Xiangchu Feng
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引用次数: 262

摘要

传统的基于表示的分类器,从经典的最近邻分类器和最近子空间分类器到最近发展的基于稀疏表示的分类器(SRC)和基于协作表示的分类器(CRC),本质上都是基于距离的分类器。尽管SRC和CRC的分类结果很有趣,但其内在的分类机制尚不清楚。本文提出了一个概率协同表示框架,该框架可以很好地定义和计算一个测试样本属于所有类的协同子空间的概率。因此,我们提出了一种基于概率协同表示的分类器(ProCRC),它共同最大化测试样本属于多个类别中的每一个的可能性。最后的分类是通过检查哪个类具有最大的似然来执行的。所提出的ProCRC具有清晰的概率解释,其性能优于SRC、CRC和SVM等常用分类器。再加上CNN的特征,它还可以在各种具有挑战性的视觉数据集上产生最先进的分类结果。
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A Probabilistic Collaborative Representation Based Approach for Pattern Classification
Conventional representation based classifiers, ranging from the classical nearest neighbor classifier and nearest subspace classifier to the recently developed sparse representation based classifier (SRC) and collaborative representation based classifier (CRC), are essentially distance based classifiers. Though SRC and CRC have shown interesting classification results, their intrinsic classification mechanism remains unclear. In this paper we propose a probabilistic collaborative representation framework, where the probability that a test sample belongs to the collaborative subspace of all classes can be well defined and computed. Consequently, we present a probabilistic collaborative representation based classifier (ProCRC), which jointly maximizes the likelihood that a test sample belongs to each of the multiple classes. The final classification is performed by checking which class has the maximum likelihood. The proposed ProCRC has a clear probabilistic interpretation, and it shows superior performance to many popular classifiers, including SRC, CRC and SVM. Coupled with the CNN features, it also leads to state-of-the-art classification results on a variety of challenging visual datasets.
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