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首页> 外文期刊>IEEE transactions on mobile computing >Pothole in the Dark: Perceiving Pothole Profiles with Participatory Urban Vehicles
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Pothole in the Dark: Perceiving Pothole Profiles with Participatory Urban Vehicles

机译:黑暗中的坑洼:参与式城市车辆感知坑洼轮廓

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Accessing to timely and accurate road condition information, especially about dangerous potholes is of great importance to the public and the government. In this paper, we propose a novel scheme, called P3 , which utilizes smartphones placed in normal vehicles to sense and estimate the profiles of potholes on urban surface roads. In particular, a P3 -enabled smartphone can actively learn the knowledge about the suspension system of the host vehicle without any human intervention and adopts a one degree-of-freedom (DOF) vibration model to infer the depth and length of pothole while the vehicle is hitting the pothole. Furthermore, P3 shows the potential to derive more accurate results by aggregating individual estimates. In essence, P3 is light-weighted and robust to various conditions such as poor light, bad weather, and different vehicle types. We have implemented a prototype system to prove the practical feasibility of P3 . The results of extensive experiments based on real trace demonstrate the efficacy of the P3 design. On average, P3 can achieve low depth and length estimation error rates of 13 and 16 percent, respectively.
机译:及时获得准确的道路状况信息,尤其是有关危险坑洞的信息,对于公众和政府而言都至关重要。在本文中,我们提出了一种称为P3的新方案,该方案利用放置在普通车辆中的智能手机来感知和估算城市地面道路上坑洼的轮廓。尤其是,启用P3的智能手机可以在无需任何人工干预的情况下主动学习有关本车悬架系统的知识,并采用单自由度(DOF)振动模型来推断出车辆行驶时坑洞的深度和长度。碰到坑洼。此外,P3显示了通过汇总各个估计来获得更准确结果的潜力。从本质上讲,P3的重量轻且对各种条件(例如光线不足,恶劣的天气和不同的车辆类型)都具有鲁棒性。我们已经实现了原型系统,以证明P3的实际可行性。基于真实轨迹的大量实验结果证明了P3设计的有效性。平均而言,P3可以实现13%和16%的低深度和长度估计错误率。

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