Pedestrian detection and tracking in infrared imagery using shape and appearance |
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Authors: | Congxia Dai Yunfei Zheng Xin Li |
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Affiliation: | aLane Department of Computer Science and Electrical Engineering, West Virginia University, Morgantown, WV 26506-6109, USA |
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Abstract: | In this paper, we present an approach toward pedestrian detection and tracking from infrared imagery using joint shape and appearance cues. A layered representation is first introduced and a generalized expectation-maximization (EM) algorithm is developed to separate infrared images into background (still) and foreground (moving) layers regardless of camera panning. In the two-pass scheme of detecting pedestrians from the foreground layer: shape cue is first used to eliminate non-pedestrian moving objects and then appearance cue helps to locate the exact position of pedestrians. Templates with varying sizes are sequentially applied to detect pedestrians at multiple scales to accommodate different camera distances. To facilitate the task of pedestrian tracking, we formulate the problem of shot segmentation and present a graph matching-based tracking algorithm that jointly exploits the shape, appearance and distance information. Experimental results with both OSU Infrared Image Database and WVU Infrared Video Database are reported to demonstrate the accuracy and robustness of our algorithm. |
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Keywords: | Infrared imagery Background mosaicing Pedestrian detection Shape-based classification Appearance-based localization Graph theoretic tracking Shot segmentation Polarity switch |
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