Title :
A Clustering-Based Obstacle Segmentation Approach for Urban Environments
Author :
Daniela A. Ridel;Patrick Y. Shinzato;Denis F. Wolf
Author_Institution :
Inst. of Math. &
Abstract :
The detection of obstacles is a fundamental issue in autonomous navigation, as it is the main key for collision prevention. This paper presents a method for the segmentation of general obstacles by stereo vision with no need of dense disparity maps or assumptions about the scenario. A sparse set of points is selected according to a local spatial condition and then clustered in function of its neighborhood, disparity values and a cost associated with the possibility of each point being part of an obstacle. The method was evaluated in hand-labeled images from KITTI object detection benchmark and the precision and recall metrics were calculated. The quantitative and qualitative results showed satisfactory in scenarios with different types of objects.
Keywords :
"Clustering algorithms","Sensors","Cameras","Benchmark testing","Image edge detection","Robots","Image segmentation"
Conference_Titel :
Robotics Symposium (LARS) and 2015 3rd Brazilian Symposium on Robotics (LARS-SBR), 2015 12th Latin American
DOI :
10.1109/LARS-SBR.2015.58