Title :
Acquisition and propagation of spatial constraints based on qualitative information
Author :
Sogo, Takushi ; Ishiguro, Hiroshi ; Ishida, Toru
Author_Institution :
Dept. of Social Informatics, Kyoto Univ., Japan
fDate :
3/1/2001 12:00:00 AM
Abstract :
In robot navigation, one of the important and fundamental issues is to find positions of landmarks or vision sensors located around the robot. This paper proposes a method for reconstructing qualitative positions of multiple vision sensors from qualitative information observed by the vision sensors, i.e., motion directions of moving objects. In order to directly acquire the qualitative positions of points, the method proposed in this paper iterates the following steps: 1) observing motion directions (left or right) of moving objects with the vision sensors, 2) classifying the vision sensors into spatially classified pairs based on the motion directions, 3) acquiring three point constraints, and 4) propagating the constraints. Compared with the previous methods, which reconstruct the environment structure from quantitative measurements and acquire qualitative representations by abstracting it, this paper focuses on how to acquire qualitative positions of landmarks from low-level, simple, and reliable information (that is, “qualitative”). The method has been evaluated with simulations and also verified with observation errors
Keywords :
computerised navigation; mobile robots; robot vision; constraint propagation; environment structure reconstruction; iterative method; landmark positions; motion direction observation; multiple vision sensors; observation errors; qualitative information; qualitative position reconstruction; qualitative positions; qualitative representations; quantitative measurements; robot navigation; spatial constraints; spatially classified pairs; vision sensor classification; vision sensor positions; Cognitive robotics; Computational modeling; Computer errors; Computer vision; Navigation; Position measurement; Robot sensing systems; Robot vision systems; Stereo vision; Working environment noise;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on