題名: Pedestrian Detection in Images by Integrating Heterogeneous Detectors
作者: Liu, Yi-Hsin Jr
Huang, Tz-Huan Jr
Tsai, Augustine Jr
Liu, Wen-Kai Jr
Tsai, Jui-Yang Jr
Chuang, Yung-Yu Jr
關鍵字: Pedestrian detection
Cell models
Hough transform
期刊名/會議名稱: 2010 ICS會議
摘要: Pedestrian Detection in still images is a key problem in computer vision. Traditional approaches design features for representing the holistic human body. Unfortunately, occlusions and articulations pose challenges and degrade their performances. Part-based representations have more potential to solve these problems. However, they tend to produce more false alarms than holistic approaches. This paper proposes a framework to integrate heterogeneous detectors (including holistic, part-based and face detectors) to boost pedestrian detection performance.Responses from heterogeneous detectors cast probability votes using Hough transform and considering geometric relationship of different detectors. Peaks of votes localize where pedestrians are. To avoid false alarms, cell models are learned in advance to evaluate local alignment and to reject wrong detections. Experiments on the INRIA dataset show that our framework provides a better performance than some state-of-the art methods.
日期: 2011-01-10T02:16:40Z
分類:2010年 ICS 國際計算機會議(如需查看全文,請連結至IEEE Xplore網站)

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