中国科学院机构知识库网格
Chinese Academy of Sciences Institutional Repositories Grid
低维特征空间中基于旋转图像的三维环境模型配准方法

文献类型:期刊论文

作者何玉庆
刊名中国科学:技术科学
出版日期2014
卷号44期号:1页码:108-118
关键词环境建模 旋转图像 模型配准 机器人协作
ISSN号1674-7259
其他题名A new spin image based registration algorithm of 3D surrounding model in low-dimensional feature space
产权排序1
中文摘要近年来,异类机器人之间(如飞行机器人和地面机器人)的协作成为机器人学研究发展的一个新的领域.异类机器人协作的难点之一是协作环境建模,而由于所获得的环境模型具有不同的观测视角和尺度,其环境建模中的模型配准是一个难点和关键.目前,能够适用于大视角差、大尺度差场景配准的方法并不多,基于旋转图像的配准方法被认为是一种可行方案,但其中存在的计算负担大和在野外环境中的鲁棒性差使得其也很难在实际系统中应用.基于此,面向三维点云环境模型,以旋转图像为基础,提出了一种新的基于低维特征空间的模型配准方法.首先,通过引入模型曲率、旋转图像熵值和激光反射强度3个特征构建了一个三维特征空间,得到候选对应点集合.然后,在...
英文摘要Most recently, cooperation and coordination among different robots (CCDR), e.g., the air robot and the ground robot, has gradually been a new researching topic in the field of robotics. Among several challenging problems in CCDR, surrounding model registration is very important and difficult, because the models from different robots are usually of different scale and obtained from completely different viewpoints. Currently, very little algorithms have been reported to be feasible for this problem, wherein spin-image based scheme has achieved much attention. However, researches have showed that spin-image based methods present disadvantages in computational efficiency and robustness. Therefore, in this paper, a new spin image based 3D surrounding model registration algorithm is proposed. The new algorithm is on the basis of a three-dimensional feature space, which is composed by the curvature, the Tsallis entropy of spin image, and the reflection intensity of the laser sensor, and combined with the concept of KD-tree to firstly realize the primary key point matching, i.e., to find the corresponding point candidate set (CPCS). After that, spin-image based corresponding point searching is conducted with respect to each CPCS to obtain the accurate corresponding point relation. The most absorbing advantages of the proposed scheme are as the following two aspects: on one hand, due to the three extra features, the fault corresponding relation can be reduced effectively and thus the algorithm precision and robustness can be improved greatly; on the other hand, the CPCS obtained by using the KD-tree method in the constructed low-dimensional feature space contains much less points and thus the computational burden due to spin-image searching is reduced greatly. Finally, in order to verify the feasibility and validity of the proposed algorithm, experiments are conducted and the results are analyzed.
收录类别CSCD
资助信息国家自然科学基金(批准号:61035005,61305121)资助项目
语种中文
CSCD记录号CSCD:5043312
源URL[http://ir.sia.ac.cn/handle/173321/15107]  
专题沈阳自动化研究所_机器人学研究室
推荐引用方式
GB/T 7714
何玉庆. 低维特征空间中基于旋转图像的三维环境模型配准方法[J]. 中国科学:技术科学,2014,44(1):108-118.
APA 何玉庆.(2014).低维特征空间中基于旋转图像的三维环境模型配准方法.中国科学:技术科学,44(1),108-118.
MLA 何玉庆."低维特征空间中基于旋转图像的三维环境模型配准方法".中国科学:技术科学 44.1(2014):108-118.

入库方式: OAI收割

来源:沈阳自动化研究所

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