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Linear discriminant analysis representation and CRC representation for image classification

机译:线性判别分析表示法和CRC表示法用于图像分类

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Linear discriminant analysis (LDA) has good stability and applicability for real-world tasks, because it can use orthogonal vectors to extract suitable features, which not only suppresses the difference between different classes and unrelated identification information, but also is not sensitive to illuminations and varying facial expressions. LDA can also decrease the dimension of original images, which improves the efficiency of recognition images. This paper proposes the simultaneous use of LDA and collaborative representation classification (CRC) for classification of images and obtains excellent performance. LDA is used to extract features and construct virtual images. This proposed method can automatically and quickly extract suitable features without any manual setting. The obtained virtual images are also different and complementary with original images, which effectively improve the performance of image classification. This novel method is not only simple and easy to implement, but also doesn't have any parameter. As a consequence, it has good prospect of practical applications. To fully verify the performance, we design comparative experiments on face datasets.
机译:线性判别分析(LDA)具有良好的稳定性和适用性,因为它可以使用正交向量提取合适的特征,因此不仅可以抑制不同类别​​和无关标识信息之间的差异,而且对光照和光照不敏感,因此可以在现实世界中完成任务。不同的面部表情。 LDA还可以减小原始图像的尺寸,从而提高识别图像的效率。本文提出了同时使用LDA和协作表示分类(CRC)进行图像分类并获得出色的性能。 LDA用于提取特征并构建虚拟图像。此提议的方法可以自动,快速地提取合适的特征,而无需任何手动设置。所获得的虚拟图像也与原始图像不同且互补,有效地提高了图像分类的性能。这种新颖的方法不仅简单易实现,而且没有任何参数。结果,具有很好的实际应用前景。为了充分验证性能,我们在人脸数据集上设计了对比实验。

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