Publication | Closed Access
Stereo- and neural network-based pedestrian detection
376
Citations
23
References
2000
Year
Scene AnalysisMachine VisionImage AnalysisMachine LearningEngineeringPattern RecognitionObject DetectionObject RecognitionComputer Stereo VisionStereo ImagingScene UnderstandingTrained Neural NetworkIntensity GradientsDeep LearningPedestrian DetectionScene ModelingComputer Vision
Pedestrian detection is essential to avoid dangerous traffic situations. We present a fast and robust algorithm for detecting pedestrians in a cluttered scene from a pair of moving cameras. This is achieved through stereo-based segmentation and neural network-based recognition. The algorithm includes three steps. First, we segment the image into sub-image object candidates using disparities discontinuity. Second, we merge and split the sub-image object candidates into sub-images that satisfy pedestrian size and shape constraints. Third, we use intensity gradients of the candidate sub-images as input to a trained neural network for pedestrian recognition. The experiments on a large number of urban street scenes demonstrate that the proposed algorithm: (1) can detect pedestrians in various poses, shapes, sizes, clothing, and occlusion status; (2) runs in real-time; and (3) is robust to illumination and background changes.
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