Dense, Sonar-Based Reconstruction Of Underwater Scenes

2019 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS (IROS)(2019)

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摘要
Typically, the reconstruction problem is addressed in three independent steps: first, sensor processing techniques are used to filter and segment sensor data as required by the front end. Second, the front end builds the factor graph for the problem to obtain an accurate estimate of the robot's full trajectory. Finally, the end product is obtained by further processing of sensor data, now re-projected from the optimized trajectory. In this paper we present an approach to model the reconstruction problem in a way that unifies the aforementioned problems under a single framework for a particular application: sonar-based inspection of underwater structures. This is achieved by formulating both the sonar segmentation and point cloud reconstruction problems as factor graphs, in tandem with the SLAM problem. We provide experimental results using data from a ship hull inspection test.
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关键词
sonar-based inspection,underwater structures,sonar segmentation,point cloud reconstruction problems,factor graph,SLAM problem,sonar-based reconstruction,underwater scenes,sensor processing,dense-based reconstruction,sensor data segmentation,sensor data filter,ship hull inspection test
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