3D shape representation with spatial probabilistic distribution of intrinsic shape keypoints

Abstract The accelerated advancement in modeling, digitizing, and visualizing techniques for 3D shapes has led to an increasing amount of 3D models creation and usage, thanks to the 3D sensors which are readily available and easy to utilize. As a result, determining the similarity between 3D shapes...

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Main Authors: Vijaya K. Ghorpade, Paul Checchin, Laurent Malaterre, Laurent Trassoudaine
Format: Article
Language:English
Published: SpringerOpen 2017-07-01
Series:EURASIP Journal on Advances in Signal Processing
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13634-017-0483-y
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spelling doaj-3f7f2aa793c9489d98330e2c42e578ba2020-11-25T00:45:32ZengSpringerOpenEURASIP Journal on Advances in Signal Processing1687-61802017-07-012017112210.1186/s13634-017-0483-y3D shape representation with spatial probabilistic distribution of intrinsic shape keypointsVijaya K. Ghorpade0Paul Checchin1Laurent Malaterre2Laurent Trassoudaine3Université Clermont Auvergne, CNRS, SIGMA Clermont, Institut PascalUniversité Clermont Auvergne, CNRS, SIGMA Clermont, Institut PascalUniversité Clermont Auvergne, CNRS, SIGMA Clermont, Institut PascalUniversité Clermont Auvergne, CNRS, SIGMA Clermont, Institut PascalAbstract The accelerated advancement in modeling, digitizing, and visualizing techniques for 3D shapes has led to an increasing amount of 3D models creation and usage, thanks to the 3D sensors which are readily available and easy to utilize. As a result, determining the similarity between 3D shapes has become consequential and is a fundamental task in shape-based recognition, retrieval, clustering, and classification. Several decades of research in Content-Based Information Retrieval (CBIR) has resulted in diverse techniques for 2D and 3D shape or object classification/retrieval and many benchmark data sets. In this article, a novel technique for 3D shape representation and object classification has been proposed based on analyses of spatial, geometric distributions of 3D keypoints. These distributions capture the intrinsic geometric structure of 3D objects. The result of the approach is a probability distribution function (PDF) produced from spatial disposition of 3D keypoints, keypoints which are stable on object surface and invariant to pose changes. Each class/instance of an object can be uniquely represented by a PDF. This shape representation is robust yet with a simple idea, easy to implement but fast enough to compute. Both Euclidean and topological space on object’s surface are considered to build the PDFs. Topology-based geodesic distances between keypoints exploit the non-planar surface properties of the object. The performance of the novel shape signature is tested with object classification accuracy. The classification efficacy of the new shape analysis method is evaluated on a new dataset acquired with a Time-of-Flight camera, and also, a comparative evaluation on a standard benchmark dataset with state-of-the-art methods is performed. Experimental results demonstrate superior classification performance of the new approach on RGB-D dataset and depth data.http://link.springer.com/article/10.1186/s13634-017-0483-y3D descriptorsShape signatureGeodesicsWeighted graphsObject recognitionClassification
collection DOAJ
language English
format Article
sources DOAJ
author Vijaya K. Ghorpade
Paul Checchin
Laurent Malaterre
Laurent Trassoudaine
spellingShingle Vijaya K. Ghorpade
Paul Checchin
Laurent Malaterre
Laurent Trassoudaine
3D shape representation with spatial probabilistic distribution of intrinsic shape keypoints
EURASIP Journal on Advances in Signal Processing
3D descriptors
Shape signature
Geodesics
Weighted graphs
Object recognition
Classification
author_facet Vijaya K. Ghorpade
Paul Checchin
Laurent Malaterre
Laurent Trassoudaine
author_sort Vijaya K. Ghorpade
title 3D shape representation with spatial probabilistic distribution of intrinsic shape keypoints
title_short 3D shape representation with spatial probabilistic distribution of intrinsic shape keypoints
title_full 3D shape representation with spatial probabilistic distribution of intrinsic shape keypoints
title_fullStr 3D shape representation with spatial probabilistic distribution of intrinsic shape keypoints
title_full_unstemmed 3D shape representation with spatial probabilistic distribution of intrinsic shape keypoints
title_sort 3d shape representation with spatial probabilistic distribution of intrinsic shape keypoints
publisher SpringerOpen
series EURASIP Journal on Advances in Signal Processing
issn 1687-6180
publishDate 2017-07-01
description Abstract The accelerated advancement in modeling, digitizing, and visualizing techniques for 3D shapes has led to an increasing amount of 3D models creation and usage, thanks to the 3D sensors which are readily available and easy to utilize. As a result, determining the similarity between 3D shapes has become consequential and is a fundamental task in shape-based recognition, retrieval, clustering, and classification. Several decades of research in Content-Based Information Retrieval (CBIR) has resulted in diverse techniques for 2D and 3D shape or object classification/retrieval and many benchmark data sets. In this article, a novel technique for 3D shape representation and object classification has been proposed based on analyses of spatial, geometric distributions of 3D keypoints. These distributions capture the intrinsic geometric structure of 3D objects. The result of the approach is a probability distribution function (PDF) produced from spatial disposition of 3D keypoints, keypoints which are stable on object surface and invariant to pose changes. Each class/instance of an object can be uniquely represented by a PDF. This shape representation is robust yet with a simple idea, easy to implement but fast enough to compute. Both Euclidean and topological space on object’s surface are considered to build the PDFs. Topology-based geodesic distances between keypoints exploit the non-planar surface properties of the object. The performance of the novel shape signature is tested with object classification accuracy. The classification efficacy of the new shape analysis method is evaluated on a new dataset acquired with a Time-of-Flight camera, and also, a comparative evaluation on a standard benchmark dataset with state-of-the-art methods is performed. Experimental results demonstrate superior classification performance of the new approach on RGB-D dataset and depth data.
topic 3D descriptors
Shape signature
Geodesics
Weighted graphs
Object recognition
Classification
url http://link.springer.com/article/10.1186/s13634-017-0483-y
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