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Fast orthogonal linear discriminant analysis with application to image classification

机译:快速正交线性判别分析及其在图像分类中的应用

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Compared to linear discriminant analysis (LDA), its orthogonalized version is a more effective statistical learning tool for dimension reduction, which devotes to better separating the data points from different classes in the lower-dimensional subspace. However, existing orthogonalized LDA techniques suffer from various drawbacks, including the requirement for expensive computing time. This paper develops an efficient orthogonal dimension reduction approach, referred to as fast orthogonal linear discriminant analysis (FOLDA), which is based on existing orthogonal linear discriminant analysis (OLDA) algorithms. However, different from previous efforts, the new approach applies the QR decomposition and the regression to solve for a new orthogonal projection vector at each iteration, leading to the by far cheaper computational cost. FOLDA achieves comparable recognition rate to existing OLDA algorithms due to the incorporation of the idea and spirit behind the latter ones. Experimental results on image databases, such as MINST, COIL20, MEPG-7 and OUTEX, show the effectiveness and efficiency of our algorithm. (C) 2015 Elsevier B.V. All rights reserved.
机译:与线性判别分析(LDA)相比,它的正交化版本是一种更有效的降维统计学习工具,致力于更好地将数据点与低维子空间中不同类别的数据分开。但是,现有的正交LDA技术具有各种缺点,包括需要昂贵的计算时间。本文开发了一种有效的正交降维方法,称为快速正交线性判别分析(FOLDA),该方法基于现有的正交线性判别分析(OLDA)算法。然而,与先前的努力不同,该新方法在每次迭代中应用QR分解和回归来求解新的正交投影矢量,从而大大降低了计算成本。由于将FOLDA的思想和精神融入后者,因此FOLDA的识别率与现有OLDA算法相当。在MINST,COIL20,MEPG-7和OUTEX等图像数据库上的实验结果证明了该算法的有效性和效率。 (C)2015 Elsevier B.V.保留所有权利。

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