Partial Static Objects Based Scan Registration on the Campus
Scan registration has a critical role in mapping and localization for Autonomous Ground Vehicle (AGV).This paper addresses the problem of alignment with only exploiting the common static objects instead of the whole point clouds or entire patches on campus environments.Particularly,we wish to use instances of classes including trees,street lamps and poles amongst the whole scene.The distinct advantage lies in it can cut the number of pairwise points down to a quite low level.A binary trained Support Vector Machine (SVM) is used to classify the segmented patches as foreground or background according to the extracted features at object level.The Iterative Closest Point (ICP) approach is adopted only in the foreground objects given an initial guesses with GPS.Experiments show our method is real-time and robust even when the the signal of GPS suddenly shifts or invalid in the sheltered environment.
scan registration object level binary classification autonomous ground vehicle
Chongyang Wei Shuangyin Shang Tao Wu Hao Fu
College of Mechatronic Engineering and Automation,National University of Defense Technology,Hunan,P. CSR Zhuzhou Electric CO.,LTD.
国际会议
Chinese Conference on Pattern Recognition, CCPR(2014年全国模式识别学术会议)
长沙
英文
371-380
2014-11-01(万方平台首次上网日期,不代表论文的发表时间)