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Revisiting robustness of the union-of-subspaces model for data-adaptive learning of nonlinear signal models

机译:重新审视非线性信号模型数据自适应学习的子篇模型的鲁棒性

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This paper revisits the problem of data-adaptive learning of geometric signal structures based on the Union-of-Subspaces (UoS) model. In contrast to prior work, it motivates and investigates an extension of the classical UoS model, termed the Metric-Constrained Union-of-Subspaces (MC-UoS) model. In this regard, it puts forth two iterative methods for data-adaptive learning of an MC-UoS in the presence of complete and missing data. The proposed methods outperform existing approaches to learning a UoS in numerical experiments involving both synthetic and real data, which demonstrates effectiveness of both an MC-UoS model and the proposed methods.
机译:本文重新评估了基于子空间联盟(UOS)模型的几何信号结构的数据自适应学习问题。与事先工作相比,它激励并调查了经典UOS模型的扩展,称为公制受限的子空间(MC-UOS)模型。在这方面,在完整且缺少数据存在下,对MC-UOS的数据自适应学习进行了两种迭代方法。所提出的方法优于现有的现有方法来学习UOS,涉及合成和实际数据的数值实验,这证明了MC-UOS模型和所提出的方法的有效性。

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