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Title: UnbiasedSparseSubspaceClusteringBySelectivePursuit
Authors: Ackermann, H.
Issue Date: 2017
Citation: Societal Geo-Innovation : short papers, posters and poster abstracts of the 20th AGILE Conference on Geographic Information Science, 9-12 May 2017, Wageningen, the Netherlands2017, 7p.
Abstract: Sparse subspace clustering (SSC) is an elegant approach for unsupervisedsegmentationifthedatapointsofeachclusterare located in linear subspaces. This model applies, for instance, in motion segmentation if some restrictions on the camera model hold. SSC requires that problems based on the l1-norm are solved to infer which points belong to the same subspace. If these unknown subspaces are well-separated this algorithm is guaranteed to succeed. The algorithm rests upon the assumption that points on the same subspace are well spread. The question what happens if this condition is violated has not yet been investigated. In this work, the effect of particular distributions on the same subspace will be analyzed. It will be shown that SSC fails to infer correct labels if points on the same subspace fall into more than one cluster.
URI: http://tailieuso.tlu.edu.vn/handle/DHTL/5094
Source: https://agile-online.org/images/conference_2017/Proceedings2017/shortpapers/66_ShortPaper_in_PDF.pdf
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