This paper proposes a framework for selecting the Laplacian eigenvalues of 3D shapes that are more relevant for shape characterization and classification. We demonstrate the redundancy of the information coded by the shape spectrum and discuss the shape characterization capability of the selected eigenvalues. The feature selection methods used to demonstrate our claim are the AdaBoost algorithm and Support Vector Machine. The efficacy of the selection is shown by comparing the results of the selected eigenvalues on shape characterization and classification with those related to the first k eigenvalues, by varying k over the cardinality of the spectrum. Our experiments, which have been performed on 3D objects represented either as triangle m...
Non-rigid 3D shape retrieval is an active and important research topic in content based object retri...
Non-rigid 3D shape retrieval is an active and important research topic in content based object retri...
International audienceDue to its high spatial and spectral information content, hyperspectral imagin...
We introduce a novel learning-based method to recover shapes from their Laplacian spectra, based on ...
The medial axis of a 3D shape is widely known for its ability as a compact and complete shape repres...
Abstract — This paper reports a new method for 3D shape classification. Given a 3D shape M, we first...
This paper proposes the use of the surface-based Laplace-Beltrami and the volumetric Laplace eigenva...
We introduce the first learning-based method for recovering shapes from Laplacian spectra. Given an ...
Spectral geometric methods have brought revolutionary changes to the field of geometry processing. O...
This paper proposes the use of the surface based Laplace-Beltrami and the volumetric Laplace eigenva...
This thesis addresses problems associated with computing spectral shape signatures for non-rigid 3D ...
Informative and discriminative feature descriptors play a funda-mental role in deformable shape anal...
International audienceConstructing a robust and discriminative local descriptor for 3D shapes is a k...
International audienceWe propose a novel 3D shape descriptor, called the Advanced Global Point Signa...
Non-rigid 3D shape retrieval is an active and important research topic in content based object retri...
Non-rigid 3D shape retrieval is an active and important research topic in content based object retri...
International audienceDue to its high spatial and spectral information content, hyperspectral imagin...
We introduce a novel learning-based method to recover shapes from their Laplacian spectra, based on ...
The medial axis of a 3D shape is widely known for its ability as a compact and complete shape repres...
Abstract — This paper reports a new method for 3D shape classification. Given a 3D shape M, we first...
This paper proposes the use of the surface-based Laplace-Beltrami and the volumetric Laplace eigenva...
We introduce the first learning-based method for recovering shapes from Laplacian spectra. Given an ...
Spectral geometric methods have brought revolutionary changes to the field of geometry processing. O...
This paper proposes the use of the surface based Laplace-Beltrami and the volumetric Laplace eigenva...
This thesis addresses problems associated with computing spectral shape signatures for non-rigid 3D ...
Informative and discriminative feature descriptors play a funda-mental role in deformable shape anal...
International audienceConstructing a robust and discriminative local descriptor for 3D shapes is a k...
International audienceWe propose a novel 3D shape descriptor, called the Advanced Global Point Signa...
Non-rigid 3D shape retrieval is an active and important research topic in content based object retri...
Non-rigid 3D shape retrieval is an active and important research topic in content based object retri...
International audienceDue to its high spatial and spectral information content, hyperspectral imagin...