论文标题
二维Bhattacharyya绑定线性判别分析及其应用
Two-dimensional Bhattacharyya bound linear discriminant analysis with its applications
论文作者
论文摘要
最近提出的通过Bhattacharyya误差界估计(L2BLDA)的L2-NORM线性判别分析标准是线性判别分析(LDA)的有效改进,用于特征提取。但是,仅提出L2BLDA来应对矢量输入样品。当面对二维(2D)输入(例如图像)时,它将丢失一些有用的信息,因为它不考虑图像的内在结构。在本文中,我们将L2BLDA扩展到二维Bhattacharyya结合线性判别分析(2DBLDA)。 2DBLDA最大化基于矩阵的阶层距离,该距离是通过类平均值的加权成对距离来衡量的,同时最大程度地减少了基于矩阵的阶级距离。课堂间期和类内的加权常数取决于提出的2DBLDA自适应的所涉及数据。另外,2DBLDA的标准等效于优化Bhattacharyya误差的上限。 2DBLDA的构建使它避免了小样本量问题,同时也具有健壮性,并且可以通过简单的标准特征值分解问题来解决。图像识别和面部图像重建的实验结果证明了所提出的方法的有效性。
Recently proposed L2-norm linear discriminant analysis criterion via the Bhattacharyya error bound estimation (L2BLDA) is an effective improvement of linear discriminant analysis (LDA) for feature extraction. However, L2BLDA is only proposed to cope with vector input samples. When facing with two-dimensional (2D) inputs, such as images, it will lose some useful information, since it does not consider intrinsic structure of images. In this paper, we extend L2BLDA to a two-dimensional Bhattacharyya bound linear discriminant analysis (2DBLDA). 2DBLDA maximizes the matrix-based between-class distance which is measured by the weighted pairwise distances of class means and meanwhile minimizes the matrix-based within-class distance. The weighting constant between the between-class and within-class terms is determined by the involved data that makes the proposed 2DBLDA adaptive. In addition, the criterion of 2DBLDA is equivalent to optimizing an upper bound of the Bhattacharyya error. The construction of 2DBLDA makes it avoid the small sample size problem while also possess robustness, and can be solved through a simple standard eigenvalue decomposition problem. The experimental results on image recognition and face image reconstruction demonstrate the effectiveness of the proposed methods.