OBSTACLE DETECTION IN WORKING AREA OF AGRICULTURAL VEHICLE BASED ON MACHINE VISION
Obstacle detection is a key component of autonomous systems. A method combined monocular vision and stereo vision obstacle detection has been put forward. For monocular vision detection, H and S components are used to segment the image acquired by the left camera mounted on the combine harvester, and then through the fixed threshold value and binary processing the potential obstacle area is located. For stereo vision, the SIFT features are extracted from the potential obstacle area, and the ANN algorithm is utilized to get matching points. According to the obtained world coordinates the obstacle and the distance from the vehicle are confirmed. In order to reduce the processing time the coefficient of image size linear compression transform is discussed and it shows that the matching points are enough to satisfy the system need and the processing time is less than 200ms when the coefficient is 4.0.The experiment using various mature wheat videos testing indicates that the method is valid to detect obstacles in front of the vehicle.
Agricultural Vehicle Color Segmentation Feature Matching Obstacle Detection
Ding Youchun Wang Shumao Chen Hong
College of Engineering & Technology,Huazhong Agricultural University,Wuhan 30070 College of Engineering,China Agricultural University,Beijing 100083
国际会议
北京
英文
1-8
2009-10-14(万方平台首次上网日期,不代表论文的发表时间)