利用行人环境信息改进智能手机的避碰功能

Marek Bachmann, Michel Morold, K. David
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引用次数: 20

摘要

2013年,全球行人占所有道路交通死亡人数的22%。减少事故数量的各种方法已经推出,并仍在研究中。大多数这些方法都有特定的限制,比如需要视线。为了克服这些限制,我们提出了无线安全带(WSB),这是一种基于智能手机的行人防撞系统。与其他系统不同的是,WSB使用从行人智能手机获取的上下文信息,不仅可以作为附加信息,还可以利用这些信息提高碰撞检测的准确性。WSB引入了独立的模块来识别行人的方向、位置和速度。我们首先利用模拟器评估了典型城市碰撞场景中每个模块的测量误差对漏报概率的影响。然后,评估了利用行人环境来降低漏报概率的效果。评估是通过一个路边检测模块的例子来完成的。路缘检测用于推断行人已经走上街道,以纠正行人的位置。结果表明,在所考虑的场景中,漏报概率降低了46.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving smartphone based collision avoidance by using pedestrian context information
Pedestrians globally comprise 22 % of all road traffic deaths in 2013. Various approaches for reducing accident numbers have already been introduced and are still being researched. Most of these approaches have specific limitations, like requiring line of sight. To overcome these limitations, we propose the Wireless Seat Belt (WSB), a smartphone-based collision avoidance system for pedestrians. Unlike other systems, the WSB uses context information, obtained from a pedestrian's smartphone, not only as additional information but also for using the information to improve the collision detection accuracy. The WSB introduces independent, individual modules for recognizing the pedestrian's direction, position, and speed. We first evaluate the influence of the measurement errors of each module on the missed alarm probability in a typical urban collision scenario using a simulator. Then, the impact of using the pedestrian's context to decrease the missed alarm probability is evaluated. The evaluation is done using the example of a curb detection module. The curb detection is used to infer that the pedestrian has stepped onto the street to correct the pedestrian's position. The results show a decrease of the missed alarm probability by 46.5 % in the scenario considered.
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