RoadSphygmo: Using barometer for traffic congestion detection

Anuj Dimri, Harsimran Singh, N. Aggarwal, B. Raman, D. Bansal, K. Ramakrishnan
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引用次数: 6

Abstract

Road traffic congestion is a worldwide problem that continues to increase, resulting in adverse environmental and health consequences in addition to wasted fuel and individual productivity loss. Detecting congestion and communicating it in a timely manner may enable a number of mitigation strategies such as re-directing traffic as well as individuals adopting alternate routes or transportation methods. We seek to crowd-source road congestion information detected on individual user's smart phones as a low-cost approach for such detection. To encourage users to participate in such crowd-sourcing, it is critical that the information is collected conveniently, with as little user action required as possible, and the use of low-cost sensors that would be ubiquitously available on smart phones. Moreover, unlike the use of GPS, the use of these sensors should consume very little energy, thus resulting in minimal drain on the phone's battery. We propose using the barometer sensor present in mobile phones to detect traffic congestion. Roads which seem perfectly flat to naked eye actually vary in altitude at different points along the way. The barometer sensor is sensitive enough to measure these altitude changes. On a congested road, a vehicle covers a much shorter distance over a time period. A vehicle experiences a significantly larger number of altitude changes on a free flowing road compared to a congested road. This forms the basis for our traffic congestion detection. We extract features based on the altitude change and use a Support Vector Machine (SVM) as a classifier to initially classify into two broad categories of vehicular state: still and in motion. The sequence of vehicle states is then used to determine the traffic condition. Traffic condition is categorized into 3 states: `stuck', `congestion' and `moving', based on chosen thresholds for the number of still/motion states. To validate the state determination by our RoadSphygmo1 algorithm, we compared it with the GPS speeds during the same time period. While the thresholds we chose are not exact measures of traffic state, they nevertheless provide useful information about the congestion on the road. Field experiments conducted on the roads in Chandigarh and Mumbai in India show promising results.
RoadSphygmo:使用气压计检测交通堵塞
道路交通拥堵是一个日益严重的世界性问题,除了造成燃料浪费和个人生产力损失外,还造成不利的环境和健康后果。及时发现拥堵并通报拥堵情况,可使一些缓解战略成为可能,例如重新定向交通以及个人采用替代路线或运输方法。我们寻求将在个人用户的智能手机上检测到的道路拥堵信息作为一种低成本的检测方法进行众包。为了鼓励用户参与这种众包,关键是要方便地收集信息,尽可能少地需要用户操作,并使用智能手机上无处不在的低成本传感器。此外,与使用GPS不同,这些传感器的使用应该消耗很少的能量,从而导致手机电池的损耗最小。我们建议使用手机中的气压计传感器来检测交通拥堵。肉眼看起来非常平坦的道路实际上在沿途的不同地点海拔不同。气压计传感器足够灵敏,可以测量这些高度变化。在拥挤的道路上,车辆在一段时间内行驶的距离要短得多。与拥挤的道路相比,车辆在自由流动的道路上经历的高度变化要大得多。这构成了我们的交通拥堵检测的基础。我们根据高度变化提取特征,并使用支持向量机(SVM)作为分类器,初步将车辆状态分为静止和运动两大类。然后使用车辆状态序列来确定交通状况。根据选择的静止/运动状态的阈值,交通状况被分为3种状态:“卡住”、“拥堵”和“移动”。为了验证RoadSphygmo1算法确定的状态,我们将其与同一时间段的GPS速度进行了比较。虽然我们选择的阈值不是交通状态的精确度量,但它们仍然提供了有关道路拥堵的有用信息。在印度昌迪加尔和孟买的道路上进行的实地试验显示了令人鼓舞的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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