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A new discriminative collaborative representation-based classification method vial(2)regularizations

机译:基于新的鉴别性协作表示的分类方法小瓶(2)规范化

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摘要

Collaborative representation-based classification (CRC) is one of the famous representation-based classification methods in pattern recognition. However, a testing sample in most of the CRC variants is collaboratively reconstructed by a linear combination of all the training samples from all the classes, the training samples from the class that the testing sample belongs to have no advantage in discriminatively and competitively representing and classifying the testing sample. Moreover, the incorrect classification can easily come into being when the training samples from the different classes are very similar. To address the issues, we propose a novel discriminative collaborative representation-based classification (DCRC) method via l2 regularizations to enhance the power of pattern discrimination. In the proposed model, we consider not only the discriminative decorrelations among all the classes, but also the similarities between the reconstructed representation of all the classes and the class-specific reconstructed representations in the l2 regularizatiozns. The experiments on several public face databases have demonstrated that the proposed DCRC effectively and robustly outperforms the state-of-the-art representation-based classification methods.
机译:基于协作的分类(CRC)是模式识别中着名的基于代表性的分类方法之一。然而,大多数CRC变体中的测试样本通过来自所有类别的所有训练样本的线性组合而协同重建,测试样本所属的培训样本在差异和竞争性地代表和分类中没有优势测试样本。此外,当来自不同类别的训练样本非常相似时,可能很容易地陷入了不正确的分类。为了解决问题,我们提出了一种通过L2规范提出基于基于歧视性协作表示的分类(DCRC)方法,以增强模式辨别的力量。在所提出的模型中,我们不仅考虑所有类中的鉴别性去相关性,而且考虑所有类的重建表示与L2 RegularIzatiOZNS中的所有类别的特定于类重建表示之间的相似性。若干公共面部数据库的实验表明,所提出的DCRC有效且强大地优于基于最先进的基于代表的分类方法。

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