Joint self-localization and tracking of generic objects in 3D range data

Robotics and Automation(2013)

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摘要
Both, the estimation of the trajectory of a sensor and the detection and tracking of moving objects are essential tasks for autonomous robots. This work proposes a new algorithm that treats both problems jointly. The sole input is a sequence of dense 3D measurements as returned by multi-layer laser scanners or time-of-flight cameras. A major characteristic of the proposed approach is its applicability to any type of environment since specific object models are not used at any algorithm stage. More specifically, precise localization in non-flat environments is possible as well as the detection and tracking of e.g. trams or recumbent bicycles. Moreover, 3D shape estimation of moving objects is inherent to the proposed method. Thorough evaluation is conducted on a vehicular platform with a mounted Velodyne HDL-64E laser scanner.
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关键词
SLAM (robots),image sensors,mobile robots,object detection,path planning,position control,robot vision,3D range data,3D shape estimation,dense 3D measurement sequence,generic object joint self-localization,generic objects tracking,mounted Velodyne HDL-64E laser scanner,multilayer laser scanners,object detection,recumbent bicycles,time-of-flight cameras,trajectory estimation
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