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Nonlinear low-rank representation on Stiefel manifolds

机译:Stiefel流形上的非线性低秩表示

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摘要

Recently, the low-rank representation (LRR) has been widely used in computer vision and pattern recognition with great success owing to its effectiveness and robustness for data clustering. However, the traditional LRR mainly focuses on the data from Euclidean space and is not directly applicable to manifold-valued data. A way to extend the LRR model from Euclidean space to the Stiefel manifold, by incorporating the intrinsic geometry of the manifold, is proposed. Under LRR, an appropriate affinity matrix for data on the Stiefel manifold can be learned; subsequently data clustering can be efficiently performed on the manifold. Experiments on several directional datasets demonstrate its superior performance on clustering compared with the state-of-the-art approaches.
机译:近来,由于其对数据聚类的有效性和鲁棒性,低秩表示(LRR)已广泛用于计算机视觉和模式识别。但是,传统的LRR主要关注欧几里德空间中的数据,而不能直接应用于流形值数据。提出了一种通过结合流形的内在几何来将LRR模型从欧几里得空间扩展到Stiefel流形的方法。在LRR下,可以学习适当的Stiefel流形上数据的亲和度矩阵。随后,可以在歧管上有效地执行数据聚类。在几个方向性数据集上进行的实验表明,与最新方法相比,它在聚类上具有优越的性能。

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