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タイトルAutomated Point Cloud Correspondence Detection for Underwater Mapping Using AUVs
本文(外部サイト)http://hdl.handle.net/2060/20150021033
著者(英)Mahajan, Aditya; Rock, Stephen; Clark, Ashley; Sharma, Sumant; Hammond, Marcus
著者所属(英)NASA Ames Research Center
発行日2015-10-19
言語eng
内容記述An algorithm for automating correspondence detection between point clouds composed of multibeam sonar data is presented. This allows accurate initialization for point cloud alignment techniques even in cases where accurate inertial navigation is not available, such as iceberg profiling or vehicles with low-grade inertial navigation systems. Techniques from computer vision literature are used to extract, label, and match keypoints between "pseudo-images" generated from these point clouds. Image matches are refined using RANSAC and information about the vehicle trajectory. The resulting correspondences can be used to initialize an iterative closest point (ICP) registration algorithm to estimate accumulated navigation error and aid in the creation of accurate, self-consistent maps. The results presented use multibeam sonar data obtained from multiple overlapping passes of an underwater canyon in Monterey Bay, California. Using strict matching criteria, the method detects 23 between-swath correspondence events in a set of 155 pseudo-images with zero false positives. Using less conservative matching criteria doubles the number of matches but introduces several false positive matches as well. Heuristics based on known vehicle trajectory information are used to eliminate these.
NASA分類Cybernetics, Artificial Intelligence and Robotics; Spacecraft Instrumentation and Astrionics; Instrumentation and Photography
レポートNOARC-E-DAA-TN26066
権利Copyright, Distribution as joint owner in the copyright


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