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Applying Wavelet Packet Decomposition and One-Class Support Vector Machine on Vehicle Acceleration Traces for Road Anomaly Detection

机译:小波包分解和一类支持向量机在车辆加速轨迹上的道路异常检测

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Road condition monitoring through real-time intelligent systems has become more and more significant due to heavy road transportation. Road conditions can be roughly divided into normal and anomaly segments. The number of former should be much larger than the latter for a useable road. Based on the nature of road condition monitoring, anomaly detection is applied, especially for pothole detection in this study, using accelerometer data of a riding car. Accelerometer data were first labeled and segmented, after which features were extracted by wavelet packet decomposition. A classification model was built using one-class support vector machine. For the classifier, the data of some normal segments were used to train the classifier and the left normal segments and all potholes were for the testing stage. The results demonstrate that all 21 potholes were detected reliably in this study. With low computing cost, the proposed approach is promising for real-time application.
机译:由于道路运输繁重,通过实时智能系统进行的道路状况监控变得越来越重要。道路状况可大致分为正常段和异常段。对于可用的道路,前者的数量应比后者的数量大得多。根据道路状况监控的性质,使用骑车加速度计数据将异常检测应用到本研究中,尤其是在坑洼检测中。首先对加速度计数据进行标记和分段,然后通过小波包分解提取特征。使用一类支持向量机建立分类模型。对于分类器,一些正常段的数据用于训练分类器,而左侧正常段和所有坑洼均用于测试阶段。结果表明,在该研究中所有21个坑洞均被可靠地检测到。由于计算成本低,因此该方法有望用于实时应用。

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