DocumentCode
3743090
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. &
fYear
2015
Firstpage
265
Lastpage
270
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"
Publisher
ieee
Conference_Titel
Robotics Symposium (LARS) and 2015 3rd Brazilian Symposium on Robotics (LARS-SBR), 2015 12th Latin American
Type
conf
DOI
10.1109/LARS-SBR.2015.58
Filename
7402176
Link To Document