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Learning a perceptual manifold for image set classification

机译:学习用于图像集分类的感知流形

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We present a biologically motivated manifold learning framework for image set classification inspired by Independent Component Analysis for Grassmann manifolds. A Grassmann manifold is a collection of linear subspaces, such that each subspace is mapped on a single point on the manifold. We propose constructing Grassmann subspaces using Independent Component Analysis for robustness and improved class separation. The independent components capture spatially local information similar to Gabor-like filters within each subspace resulting in better classification accuracy. We further utilize linear discriminant analysis or sparse representation classification on the Grassmann manifold to achieve robust classification performance. We demonstrate the efficacy of our approach for image set classification on face and object recognition datasets.
机译:我们提出了一种基于格拉斯曼流形的独立成分分析启发的图像集分类的生物学动机流形学习框架。格拉斯曼流形是线性子空间的集合,因此每个子空间都映射在流形上的单个点上。我们建议使用独立分量分析构造Grassmann子空间,以提高鲁棒性并改善类分离。独立的组件在每个子空间中捕获类似于Gabor类滤波器的空间局部信息,从而获得更好的分类精度。我们进一步利用格拉斯曼流形上的线性判别分析或稀疏表示分类来实现鲁棒的分类性能。我们证明了我们的方法在面部和物体识别数据集上进行图像集分类的功效。

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