Title :
Incident prediction by fuzzy image sequence analysis
Author :
Kimachi, Masatoshi ; Kanayama, Kenji ; Teramoto, Kenbu
Author_Institution :
Central R&D Lab., Omron Corp., Kyoto, Japan
fDate :
31 Aug-2 Sep 1994
Abstract :
This study is concerned with the image sensor which is able to detect traffic incidents in a tight curve on an urban expressway. We focus on the abnormal behavior of a vehicle which caused an incident. We propose a new detection method using the image processing technique and fuzzy theory, and try to predict an incident before it happens. First, we define the “behavioral feature” which is the angle between the extracted vehicle´s moving direction and the normal moving direction. We then calculate the “certainty” by fuzzy integral of the three features namely: the size, velocity and correlation value. Then we obtain the “behavioral abnormality” from the “behavioral feature” and “certainty”. The “behavioral abnormality” represents the difference in behavior between the extracted car and a normally running car. Finally, a judgment is made in predicting an incident using the “behavioral abnormality” obtained from the continuous images. The proposed method is applied to some scenes in which an incident really happened and its effectiveness is verified
Keywords :
accidents; computer vision; fuzzy set theory; image sequences; pattern recognition; prediction theory; road traffic; road vehicles; traffic control; behavioral abnormality; computer vision; fuzzy image sequence analysis; fuzzy theory; image processing; incident prediction; road traffic control; road vehicles; urban expressway; vehicle behavioral feature; Delay; Detection algorithms; Image processing; Image sequence analysis; Laboratories; Layout; Monitoring; Road accidents; Sensor systems; Vehicle detection;
Conference_Titel :
Vehicle Navigation and Information Systems Conference, 1994. Proceedings., 1994
Conference_Location :
Yokohama
Print_ISBN :
0-7803-2105-7
DOI :
10.1109/VNIS.1994.396867