Detecting Pedestrians Using Patterns of Motion and Appearance

作者:Paul Viola, Michael J. Jones, Daniel Snow

摘要

This paper describes a pedestrian detection system that integrates image intensity information with motion information. We use a detection style algorithm that scans a detector over two consecutive frames of a video sequence. The detector is trained (using AdaBoost) to take advantage of both motion and appearance information to detect a walking person. Past approaches have built detectors based on motion information or detectors based on appearance information, but ours is the first to combine both sources of information in a single detector. The implementation described runs at about 4 frames/second, detects pedestrians at very small scales (as small as 20 × 15 pixels), and has a very low false positive rate.

论文关键词:pedestrian detection, human sensing, boosting, tracking

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论文官网地址:https://doi.org/10.1007/s11263-005-6644-8