基于CHLAC的自行车骑行者视觉检测方法避免混淆相似形状的行人

Yuki Ishii, H. Hisahara, M. Ota, T. Ogitsu, H. Takemura, H. Mizoguchi
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引用次数: 0

摘要

提出了一种基于视频序列的鲁棒自行车骑手检测方法。该方法不会将骑车人与类似形状的行人(如推自行车的人)混淆。骑自行车时发生了大量的事故。为了防止这些事故的发生,需要在交通监控摄像系统中安装自行车探测器。因此,在这一领域进行了大量的研究。然而,在以往的作品中,并没有提到区分骑自行车的人和推自行车的人,更没有提到对骑自行车的人的检测。为了实现避免混淆这类形状相似的行人的检测方法,作者采用了三次高阶局部自相关(CHLAC)技术。该方法既能自动检测人,又能识别骑车人。在使用视频序列的实验中,自行车骑手的检测率可达到80.23%。实验结果证明了该方法的有效性。
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CHLAC based vision sensing method for bicycle rider detection to avoid confusing similar shape pedestrian
This paper proposes robust bicycle rider detection method from video sequence. The proposed method does not confuse rider with similar shape pedestrian such as bicycle pusher. There are a large number of accidents happened while riding a bicycle. To prevent these accidents, bicycle rider detector is required for traffic monitoring camera system. Thus, many researches have been done in this filed. However, previous works make no mention of discriminating bicycle rider from pusher, to say nothing of bicycle rider detection. In order to realize the detection method to avoid confusing such similar shape pedestrian, the authors utilize CHLAC (Cubic Higher-order Local Auto-Correlation). The proposed method can detect human automatically and also recognize bicycle rider. In an experiment using video sequence, bicycle rider detection rate can be achieved 80.23%. Experimental results prove effectiveness of the proposed method.
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