从非光滑运动中检测行人

Mehmet Kilicarslan, J. Zheng, Aied Algarni
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引用次数: 4

摘要

基于外观的行人检测已被广泛研究,以保证行车安全。将帧间光流作为人体分类的特征之一进行探讨的作品很少。然而,本文提出了一种新的视角来观察较长时间的非平滑运动。我们探索纯粹基于运动的行人检测,这是所有行人的共同和固有的,无论他们的形状,颜色,背景等。我们在运动剖面中发现了人类不同于刚性物体的独特运动特征。在明确分析行人时空行为的基础上,检测出肢体和身体运动轨迹上的非光滑运动点。这种方法适用于行人和背景都在移动的驾驶视频,效果很好,因为它受行人形状和环境变化的影响较小。该方法计算成本低,可与基于形状的方法相结合作为预筛选工具,提高准确性和速度。
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Pedestrian detection from non-smooth motion
Pedestrian detection has been intensively studied based on appearances for driving safety. Only a few works have explored between-frame optical flow as one of features for human classification. In this paper, however, a new point of view is taken to watch a longer period for non-smooth movement. We explore the pedestrian detection purely based on motion, which is common and intrinsic for all pedestrians regardless of their shape, color, background, etc. We found unique motion characteristics of humans different from rigid objects in motion profiles. Based on the explicit analysis of spatial-temporal behaviors of pedestrians, non-smooth motion points are detected at the motion trajectories of limbs and body. This method works for driving video where both pedestrians and background are moving, and it yields good results as it is less influenced from pedestrian variations in shape and environment. The method also has low computational cost and it can be combined with a shape-based method as pre-screening tool for accuracy and speed.
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