2020
DOI: 10.1109/access.2020.3033484
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Robust Dictionary Learning and Sparse Coding With Riemannian Geometry Preserving Method in Symmetric Matrices Inner Product Space

Abstract: Existing Dictionary Learning and Sparse Coding (DLSC) algorithms for Symmetric Positive Definite (SPD) matrices usually adopt Reproducing Kernel Hilbert Space as workspace to perform necessary linear operations. But those methods heavily rely on ideal kernel maps and they are lack of robustness when facing different SPD data, especially in the case of high-sparsity coding. Different from existing methods, we explore a new workspace called Symmetric Matrices Inner Product Space (SMIPS) for modeling robust DLSC … Show more

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“…The fault diagnosis method is extended to the field of construction machinery by autonomous learning of fault features in signals with strong complex noise through deep network structure to improve the safe operation and maintainability of construction machinery. In the literature [28], an adaptive fusion of target and background for ancient building image breakage point extraction method is proposed. The method defines the structural elements of ancient building images based on visual selection characteristics, and establishes the connected grains and hierarchical statistical models of ancient building images.…”
Section: Introductionmentioning
confidence: 99%
“…The fault diagnosis method is extended to the field of construction machinery by autonomous learning of fault features in signals with strong complex noise through deep network structure to improve the safe operation and maintainability of construction machinery. In the literature [28], an adaptive fusion of target and background for ancient building image breakage point extraction method is proposed. The method defines the structural elements of ancient building images based on visual selection characteristics, and establishes the connected grains and hierarchical statistical models of ancient building images.…”
Section: Introductionmentioning
confidence: 99%