Spectral descriptors for deformable shapes
Alexander M. Bronstein

TL;DR
This paper introduces a learnable family of spectral shape descriptors that adapt to specific tasks by modeling shape and transformation statistics, improving shape analysis performance.
Contribution
It proposes a novel learning scheme for spectral descriptors based on statistical modeling and Mahalanobis metric learning, enhancing shape analysis accuracy.
Findings
Outperforms existing descriptors on SHREC'10 benchmark
Learns task-specific spectral descriptors from data
Demonstrates improved invariance and discriminative power
Abstract
Informative and discriminative feature descriptors play a fundamental role in deformable shape analysis. For example, they have been successfully employed in correspondence, registration, and retrieval tasks. In the recent years, significant attention has been devoted to descriptors obtained from the spectral decomposition of the Laplace-Beltrami operator associated with the shape. Notable examples in this family are the heat kernel signature (HKS) and the wave kernel signature (WKS). Laplacian-based descriptors achieve state-of-the-art performance in numerous shape analysis tasks; they are computationally efficient, isometry-invariant by construction, and can gracefully cope with a variety of transformations. In this paper, we formulate a generic family of parametric spectral descriptors. We argue that in order to be optimal for a specific task, the descriptor should take into account…
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Taxonomy
Topics3D Shape Modeling and Analysis · Image Retrieval and Classification Techniques · Morphological variations and asymmetry
