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首页> 外文期刊>ACM transactions on sensor networks >BaroSense: Using Barometer for Road Traffic Congestion Detection and Path Estimation with Crowdsourcing
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BaroSense: Using Barometer for Road Traffic Congestion Detection and Path Estimation with Crowdsourcing

机译:BaroSense:使用晴雨表通过众包进行道路交通拥堵检测和路径估计

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Traffic congestion on urban roadways is a serious problem requiring novel ways to detect and mitigate it. Determining the routes that lead to the traffic congestion segment is also vital in devising mitigation strategies. Further, crowdsourcing this information allows for use of these strategies quickly and in places where infrastructure is not available. In this work, we present an unconventional method, using the barometer sensor of mobile phones to (a) detect road traffic congestion and (b) estimate the paths that lead to the congested road segment. We make the observation that roads are not completely flat and very often, altitude varies along the road. The barometer sensor chips are sensitive enough to measure these variations and consume very little energy of the mobile phone, compared to other sensors such as the GPS or accelerometer. We devise a feature set to map the rate of change of this altitude as the user moves into activities characterized as "still" and "motion," which are further used by the traffic congestion detection algorithm (RoadSphygmo) to classify the group of users as being in "moving," "congestion," or "stuck" states. To estimate the paths that lead to the congested road segment, we compare the user's barometer sensor readings with a pre-stored road signature of barometer values using Dynamic Time Warping (DTW). We show that by using correlation of barometer sensor values, we can determine if users are in the same vehicle. We crowdsource this information from multiple mobile phones and use majority voting technique to improve the accuracy of traffic congestion detection and path estimation. We find a significant increase in the accuracies using crowdsourced information as compared to individual mobile phones. Further, we show that we can use barometer sensor for other applications such as bus occupancy, boarding/deboarding of a vehicle, and so on. The validation of the state determined by RoadSphygmo is done by comparing it with average GPS speed calculated during the same time period. The path estimation is validated over different intersections and considering various cases of commuter travel. The results obtained are promising and show that the traffic state determination and the estimation of the path taken by the commuter can achieve high accuracy.
机译:城市道路上的交通拥堵是一个严重的问题,需要新颖的方法来检测和缓解它。确定导致交通拥堵路段的路线对于设计缓解策略也至关重要。此外,将这些信息众包可以在没有基础结构的地方快速使用这些策略。在这项工作中,我们提出了一种非常规的方法,即使用手机的气压计传感器来(a)检测道路交通拥堵并(b)估计导致道路拥堵的路径。我们观察到,道路并不完全平坦,并且高度经常沿着道路变化。与其他传感器(例如GPS或加速度计)相比,气压计传感器芯片足够灵敏,可以测量这些变化并消耗很少的手机能量。我们设计了一个功能集,用于绘制当用户进入以“静止”和“运动”为特征的活动时此高度的变化率的图,交通拥堵检测算法(RoadSphygmo)进一步将其用于将用户组分类为处于“移动”,“拥塞”或“卡住”状态。为了估计导致拥堵路段的路径,我们使用动态时间规整(DTW)将用户的气压计传感器读数与预先存储的气压计值道路签名进行比较。通过使用气压计传感器值的相关性,我们可以确定用户是否在同一辆车中。我们从多部手机中众包这些信息,并使用多数投票技术来提高交通拥堵检测和路径估计的准确性。与单独的手机相比,我们发现使用众包信息的准确性显着提高。此外,我们证明了我们可以将气压计传感器用于其他应用,例如公交车占用,车辆上下车等。通过将RoadSphygmo确定的状态与同一时间段内计算出的平均GPS速度进行比较,来验证状态。在不同的交叉路口并考虑通勤者行进的各种情况来验证路径估计。获得的结果是有希望的,并且表明通勤者的交通状态确定和路径估计可以实现高精度。

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