Title :
A Real Time Object Detection Approach Applied to Reliable Pedestrian Detection
Author :
Ma, Guanglin ; Park, Su-Birm ; Ioffe, Alexander ; Müller-Schneiders, Stefan ; Kummert, Anton
Author_Institution :
Wuppertal Univ., Wuppertal
Abstract :
This paper presents a robust real time obstacle and pedestrian detection algorithm, which is capable of handling the challenges of stationary as well as moving objects, utilizing a single car mounted monochrome camera. First, the system detects obstacles above the ground plane by obtaining a "virtual stereo system" through the usage of inverse perspective mapping. A fast digital image stabilization algorithm is used to compensate erroneous detections whenever the flat ground plane assumption is an inaccurate model of the road surface. Finally, a low level pedestrian segmentation algorithm is developed to extract bounding boxes of potential pedestrians. Furthermore a novel approach called the pedestrian detection strip is used to improve the calculation time by a factor of six compared to previous attempts. Experiments have been carried out by applying the proposed algorithm on prerecorded sequences as well as within a test vehicle and thus in a closed loop environment. The experimental results indicate a promising detection performance. Obstacles and pedestrians up to 50 meters away from the vehicle have been detected reliably at 64 frames per second on a 3 GHz PC.
Keywords :
automated highways; feature extraction; image segmentation; object detection; stereo image processing; bounding box extraction; car mounted monochrome camera; digital image stabilization algorithm; flat ground plane assumption; inverse perspective mapping; low level pedestrian segmentation algorithm; moving objects; obstacle detection; pedestrian detection strip; real time object detection approach; reliable pedestrian detection; stationary objects; virtual stereo system; Cameras; Detection algorithms; Digital images; Image segmentation; Object detection; Roads; Robustness; Strips; Testing; Vehicle detection;
Conference_Titel :
Intelligent Vehicles Symposium, 2007 IEEE
Conference_Location :
Istanbul
Print_ISBN :
1-4244-1067-3
Electronic_ISBN :
1931-0587
DOI :
10.1109/IVS.2007.4290207