Abstract
Pedestrians are the most vulnerable participants in urban traffic. The first step toward protecting pedestrians is to reliably detect them. We present a new approach for standing- and walking-pedestrian detection, in urban traffic conditions, using grayscale stereo cameras mounted on board a vehicle. Our system uses pattern matching and motion for pedestrian detection. Both 2-D image intensity information and 3-D dense stereo information are used for classification. The 3-D data are used for effective pedestrian hypothesis generation, scale and depth estimation, and 2-D model selection. The scaled models are matched against the selected hypothesis using high-performance matching, based on the Chamfer distance. Kalman filtering is used to track detected pedestrians. A subsequent validation, based on the motion field's variance and periodicity of tracked walking pedestrians, is used to eliminate false positives. © 2006 IEEE.
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CITATION STYLE
Nedevschi, S., Bota, S., & Tomiuc, C. (2009). Stereo-based pedestrian detection for collision-avoidance applications. IEEE Transactions on Intelligent Transportation Systems, 10(3), 380–391. https://doi.org/10.1109/TITS.2008.2012373
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