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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Beyond Trace Ratio: Weighted Harmonic Mean of Trace Ratios for Multiclass Discriminant Analysis
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Beyond Trace Ratio: Weighted Harmonic Mean of Trace Ratios for Multiclass Discriminant Analysis

机译:超越痕迹比:多类判别分析的痕迹比加权谐波均值

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摘要

Linear discriminant analysis (LDA) is one of the most important supervised linear dimensional reduction techniques which seeks to learn low-dimensional representation from the original high-dimensional feature space through a transformation matrix, while preserving the discriminative information via maximizing the between-class scatter matrix and minimizing the within class scatter matrix. However, the conventional LDA is formulated to maximize the arithmetic mean of trace ratios which suffers from the domination of the largest objectives and might deteriorate the recognition accuracy in practical applications with a large number of classes. In this paper, we propose a new criterion to maximize the weighted harmonic mean of trace ratios, which effectively avoid the domination problem while did not raise any difficulties in the formulation. An efficient algorithm is exploited to solve the proposed challenging problems with fast convergence, which might always find the globally optimal solution just using eigenvalue decomposition in each iteration. Finally, we conduct extensive experiments to illustrate the effectiveness and superiority of our method over both of synthetic datasets and real-life datasets for various tasks, including face recognition, human motion recognition and head pose recognition. The experimental results indicate that our algorithm consistently outperforms other compared methods on all of the datasets.
机译:线性判别分析(LDA)是最重要的有监督的线性降维技术之一,旨在通过变换矩阵从原始高维特征空间中学习低维表示,同时通过最大化类间散点图来保留判别信息。矩阵并最小化类内散布矩阵。然而,常规的LDA被配制为最大化痕量比的算术平均值,其受到最大目标的支配,并且可能在具有许多类别的实际应用中降低识别精度。在本文中,我们提出了一个新的准则来最大化痕迹比的加权谐波均值,从而有效地避免了支配问题,而又没有给公式带来任何困难。利用一种有效的算法以快速收敛来解决所提出的挑战性问题,该算法可能总是在每次迭代中仅使用特征值分解来找到全局最优解。最后,我们进行了广泛的实验,以说明我们的方法相对于合成数据集和现实数据集在各种任务(包括面部识别,人体动作识别和头部姿势识别)上的有效性和优越性。实验结果表明,我们的算法在所有数据集上始终优于其他比较方法。

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