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Recognizing bicycling states with HMM based on accelerometer and magnetometer data

机译:基于加速度计和磁力计数据的HMM识别骑车状态

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In this paper, we design and implement an sBike (Sensorized Bike) prototype to support cyclists by recognizing various bicycling states including going straight, turning right or left, meandering, and stopping. An Android phone, which is integrated with an accelerometer, a magnetometer, and a GPS receiver, is mounted on the handle of bicycle to collect necessary data for analysis. Hidden Markov model (HMM) is adopted to recognize the bicycling states from raw sensor data. The experimental results show that the accuracy of recognition is as high as 98%. By knowing the bicycling states of cyclists, road conditions can be inferred and shared amongst users.
机译:在本文中,我们设计并实现了sBike(传感器化自行车)原型,以通过识别各种骑行状态(包括直行,右转或左转,曲折和停车)来支持骑自行车的人。集成了加速度计,磁力计和GPS接收器的Android手机安装在自行车的手柄上,以收集必要的数据进行分析。采用隐马尔可夫模型(HMM)从原始传感器数据识别骑车状态。实验结果表明,该算法的识别精度高达98%。通过了解骑车人的骑车状态,可以推断出道路状况并在用户之间共享。

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