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Multiple-rank supervised canonical correlation analysis for feature extraction, fusion and recognition

机译:用于特征提取,融合和识别的多级监督规范相关分析

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摘要

The traditional CCA and 2D-CCA algorithms are unsupervised multiple feature extraction methods. Hence, introducing the supervised information of samples into these methods should be able to promote the classification performance. In this paper, a novel method is proposed to carry out the multiple feature extraction for classification, called two-dimensional supervised canonical correlation analysis (2D-SCCA), in which the supervised information is added to the criterion function. Then, by analyzing the relationship between GCCA and 2D-SCCA, another feature extraction method called multiple-rank supervised canonical correlation analysis (MSCCA) is also developed. Different from 2D-SCCA, in MSCCA k pairs left transforms and k pairs right transforms are sought to maximize the correlation. The convergence behavior and computational complexity of the algorithms are analyzed. Experimental results on real-world databases demonstrate the viability of the formulation, they also show that the classification results of our methods are higher than the other's and the computing time is competitive. In this manner, the proposed methods proved to be the competitive multiple feature extraction and classification methods. As such, the two methods may well help to improve image recognition tasks, which are essential in many advanced expert and intelligent systems. (C) 2017 Elsevier Ltd. All rights reserved.
机译:传统的CCA和2D-CCA算法是无监督的多特征提取方法。因此,将样本的监督信息引入这些方法应该能够提高分类性能。本文提出了一种用于分类的多特征提取的新方法,即二维监督规范相关分析(2D-SCCA),其中将监督信息添加到标准函数中。然后,通过分析GCCA和2D-SCCA之间的关系,还开发了另一种特征提取方法,称为多秩监督规范相关分析(MSCCA)。与2D-SCCA不同,在MSCCA中,寻求k对左变换和k对右变换以最大化相关性。分析了算法的收敛性和计算复杂度。实际数据库上的实验结果证明了该配方的可行性,也表明我们的方法的分类结果高于其他方法,并且计算时间具有竞争力。以这种方式,所提出的方法被证明是竞争性的多特征提取和分类方法。因此,这两种方法可以很好地帮助改善图像识别任务,这在许多高级专家和智能系统中必不可少。 (C)2017 Elsevier Ltd.保留所有权利。

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