DocumentCode
1210941
Title
Stochastic performance, modeling and evaluation of obstacle detectability with imaging range sensors
Author
Matthies, Larry ; Grandjean, Piemck
Author_Institution
Jet Propulsion Lab., California Inst. of Technol., Pasadena, CA, USA
Volume
10
Issue
6
fYear
1994
fDate
12/1/1994 12:00:00 AM
Firstpage
783
Lastpage
792
Abstract
Statistical modeling and evaluation of the performance of obstacle detection systems for unmanned ground vehicles (UGV´s) is essential for the design, evaluation and comparison of sensor systems. In this report, we address this issue for imaging range sensors by dividing the evaluation problem into two levels: quality of the range data itself and quality of the obstacle detection algorithms applied to the range data. We review existing models of the quality of range data from stereo vision and AM-CW LADAR, then use these to derive a new model for the quality of a simple obstacle detection algorithm. This model predicts the probability of detecting obstacles and the probability of false alarms, as a function of the size and distance of the obstacle, the resolution of the sensor, and the level of noise in the range data. We evaluate these models experimentally using range data from stereo image pairs of a gravel road with known obstacles at several distances. The results show that the approach is a promising tool for predicting and evaluating the performance of obstacle detection with imaging range
Keywords
laser beam applications; mobile robots; optical radar; robot dynamics; robot vision; statistical analysis; stereo image processing; vehicles; AM-CW LADAR; UGV; detection probability; false alarm probability; gravel road; imaging range sensors; obstacle detectability; obstacle detection algorithm quality; range data quality; stereo image pairs; stereo vision; unmanned ground vehicles; Detection algorithms; Image sensors; Land vehicles; Laser radar; Noise level; Predictive models; Sensor systems; Stereo vision; Stochastic processes; Vehicle detection;
fLanguage
English
Journal_Title
Robotics and Automation, IEEE Transactions on
Publisher
ieee
ISSN
1042-296X
Type
jour
DOI
10.1109/70.338533
Filename
338533
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