A Review on Vision-Based Pedestrian Detection for Intelligent Vehicles
- 1 December 2006
- conference paper
- Published by Institute of Electrical and Electronics Engineers (IEEE)
- Vol. j81 d ii, 57-62
- https://doi.org/10.1109/icves.2006.371554
Abstract
Vision-based pedestrian detection techniques for smart vehicles have emerged as a hot research topic in the field of vehicular electronics and driving safety. A vision-based system can recognize pedestrians in front of the moving vehicle, then warns the driver of the dangerous situation loudly or slows the vehicle down automatically to protect both drivers and pedestrians. In general, the vision-based pedestrian detection process can be divided into three consecutive steps: pedestrian detection, pedestrian recognition, and pedestrian tracking. In this paper, a great variety of methods associated with these three steps is introduced and compared in detail. In addition, the implementation of vision-based pedestrian detection on vehicles is also presented. In the end, we analyze the difficulties and the research trend in the future.Keywords
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