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Greedy algorithm for subspace clustering from corrupted and incomplete data

机译:从损坏和不完整的数据进行子空间聚类的贪心算法

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We describe the Fast Greedy Sparse Subspace Clustering (FGSSC) algorithm providing an efficient method for clustering data belonging to a few low-dimensional linear or affine subspaces. FGSSC is a modification of the SSC algorithm. The main difference of our algorithm from predecessors is its ability to work with noisy data having a high rate of erasures (missed entries at the known locations) and errors (corrupted entries at unknown locations). The algorithm has significant advantage over predecessor on synthetic models as well as for the Extended Yale B dataset of facial images. In particular, the face recognition misclassification rate turned out to be 6-20 times lower than for the SSC algorithm.
机译:我们描述了快速贪婪稀疏子空间聚类(FGSSC)算法,该算法为聚类属于一些低维线性或仿射子空间的数据提供了一种有效的方法。 FGSSC是SSC算法的修改。我们的算法与以前的算法的主要区别在于,它能够处理具有较高擦除率(已知位置的丢失条目)和错误(未知位置的损坏条目)的嘈杂数据。与合成模型以及面部图像的扩展Yale B数据集相比,该算法具有明显的优势。尤其是,人脸识别错误分类率比SSC算法低6-20倍。

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