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Incremental Principal Component Analysis-Based Sparse Representation for Face Pose Classification

机译:基于增量主成分分析的稀疏表示,用于人脸姿势分类

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This paper proposes an Adaptive Sparse Representation pose Classification (ASRC) algorithm to deal with face pose estimation in occlusion, bad illumination and low-resolution cases. The proposed approach classifies different poses, the appearance of face images from the same pose being modelled by an online eigenspace which is built via Incremental Principal Component Analysis. Then the combination of the eigenspaces of all pose classes are used as an over-complete dictionary for sparse representation and classification. However, the big amount of training images may lead to build an extremely large dictionary which will decelerate the classification procedure. To avoid this situation, we devise a conditional update method that updates the training eigenspace only with the misclassified face images. Experimental results show that the proposed method is very robust when the illumination condition changes very dynamically and image resolutions are quite poor.
机译:提出了一种自适应稀疏表示姿势分类(ASRC)算法,用于遮挡,光照差和低分辨率情况下的人脸姿势估计。所提出的方法对不同的姿势进行了分类,来自同一姿势的面部图像的外观由在线特征空间建模,该特征空间是通过增量主成分分析建立的。然后,将所有姿势类的特征空间组合用作稀疏表示和分类的过度完整字典。但是,大量的训练图像可能会导致建立一个非常大的字典,这将减慢分类过程。为了避免这种情况,我们设计了一种条件更新方法,该方法仅使用分类错误的面部图像更新训练本征空间。实验结果表明,该方法在光照条件动态变化且图像分辨率较差的情况下具有很好的鲁棒性。

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