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A Proposal of 3D Feature Based on Occupancy of Point Cloud in Multiscale Shell Region
Author(s) -
TAKEI SHOICHI,
AKIZUKI SHUICHI,
HASHIMOTO MANABU
Publication year - 2017
Publication title -
electronics and communications in japan
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.131
H-Index - 13
eISSN - 1942-9541
pISSN - 1942-9533
DOI - 10.1002/ecj.11994
Subject(s) - point cloud , feature (linguistics) , histogram , pattern recognition (psychology) , artificial intelligence , detector , measure (data warehouse) , computer science , object (grammar) , point (geometry) , feature vector , object detection , contrast (vision) , feature extraction , computer vision , mathematics , image (mathematics) , data mining , geometry , telecommunications , philosophy , linguistics
SUMMARY In this paper, we propose a novel keypoint detection and feature description method called “SHORT” (Shell Histograms and Occupancy from Radial Transform) for fast 3D object recognition. Conventional keypoint detection and feature description methods such as the SHOT method have been necessary to calculate many normal vectors or other statistical values from the point cloud data in local regions, and therefore its computational costs are expensive. By contrast, the SHORT method consists of a fast keypoint detector that does not calculate statistics and a fast feature descriptor that uses a small number of points in the restricted local regions. The keypoint detector uses the occupancy measure which can be estimated by only counting the number of points in multiple spherical shell regions. Also, the feature descriptor uses a small number of points included in distinctive shell regions of multiple scales. Experimental results in 3D object recognition using real dataset show that the processing speed of the proposed method is approximately nine times faster than that of comparative methods.

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