Adaptive hysteresis thresholding based pedestrian detection in nighttime using a normal camera

Junfeng Ge, Yupin Luo, D. Xiao
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引用次数: 3

Abstract

This paper presents a novel approach for pedestrian detection in nighttime with a normal camera. Generally, there is a real-time requirement in the pedestrian detection system which limits the computational complexity of algorithms. Thus most systems utilize the thresholding method for pedestrian detection or segmentation. However, the single adaptive threshold based approach doesn't always work well and sometimes gives poor results. In this paper, we propose adaptive hysteresis based segmentation algorithm which holds two adaptive thresholds. This inspiration comes from the Canny operator which uses hysteresis for edge thresholding. Furthermore, we expand the hysteresis to be proper for region segmentation in pedestrian detection. Experiments prove that the proposed method performs well most of the time and improves the ability of the pedestrian detection system.
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基于自适应迟滞阈值的夜间行人检测
本文提出了一种利用普通摄像机进行夜间行人检测的新方法。行人检测系统一般都有实时性要求,这限制了算法的计算复杂度。因此,大多数系统使用阈值法行人检测或分割。然而,基于单一自适应阈值的方法并不总能很好地工作,有时会给出较差的结果。本文提出了一种基于自适应迟滞的分割算法,该算法具有两个自适应阈值。这种灵感来自于Canny算子,它使用迟滞进行边缘阈值。进一步,我们扩展了迟滞量,使其适合于行人检测中的区域分割。实验证明,该方法在大多数情况下性能良好,提高了行人检测系统的性能。
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