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Covariance discriminative learning: A natural and efficient approach to image set classification

机译:协方差判别学习:一种自然有效的图像集分类方法

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We propose a novel discriminative learning approach to image set classification by modeling the image set with its natural second-order statistic, i.e. covariance matrix. Since nonsingular covariance matrices, a.k.a. symmetric positive definite (SPD) matrices, lie on a Riemannian manifold, classical learning algorithms cannot be directly utilized to classify points on the manifold. By exploring an efficient metric for the SPD matrices, i.e., Log-Euclidean Distance (LED), we derive a kernel function that explicitly maps the covariance matrix from the Riemannian manifold to a Euclidean space. With this explicit mapping, any learning method devoted to vector space can be exploited in either its linear or kernel formulation. Linear Discriminant Analysis (LDA) and Partial Least Squares (PLS) are considered in this paper for their feasibility for our specific problem. We further investigate the conventional linear subspace based set modeling technique and cast it in a unified framework with our covariance matrix based modeling. The proposed method is evaluated on two tasks: face recognition and object categorization. Extensive experimental results show not only the superiority of our method over state-of-the-art ones in both accuracy and efficiency, but also its stability to two real challenges: noisy set data and varying set size.
机译:我们通过对图像集进行自然二阶统计量(即协方差矩阵)建模,为图像集分类提出了一种新颖的判别学习方法。由于非奇异协方差矩阵(也称为对称正定(SPD)矩阵)位于黎曼流形上,因此经典学习算法无法直接用于对流形上的点进行分类。通过探索SPD矩阵的有效度量,即对数-欧几里得距离(LED),我们导出了一个核函数,该函数明确将协方差矩阵从黎曼流形映射到欧几里得空间。通过这种显式映射,可以在线性或核公式中利用任何专门用于向量空间的学习方法。本文考虑了线性判别分析(LDA)和偏最小二乘(PLS)的可行性,以解决我们的特定问题。我们将进一步研究传统的基于线性子空间的集合建模技术,并使用基于协方差矩阵的建模将其转换为统一的框架。所提出的方法在两个任务上进行了评估:人脸识别和对象分类。大量的实验结果不仅表明我们的方法在准确性和效率上都优于最新方法,而且还具有对两个实际挑战的稳定性:嘈杂的设置数据和可变的设置大小。

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