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首页> 外文期刊>IEEE Transactions on Vehicular Technology >Vehicle-Classification Algorithm for Single-Loop Detectors Using Neural Networks
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Vehicle-Classification Algorithm for Single-Loop Detectors Using Neural Networks

机译:基于神经网络的单环探测器车辆分类算法

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Vehicle class is an important parameter in the process of road-traffic measurement. Currently, inductive-loop detectors (ILD) and image sensors are rarely used for vehicle classification because of their low accuracy. To improve the accuracy, the authors suggest a new algorithm for ILD using back-propagation neural networks. In the developed algorithm, the inputs to the neural networks are the variation rate of frequency and frequency waveform. The output is five classified vehicles. The developed algorithm was assessed at test sites, and the recognition rate was 91.5%. The results verified that the proposed algorithm improves the vehicle-classification accuracy compared to the conventional method based on ILD
机译:车辆等级是道路交通测量过程中的重要参数。当前,感应回路检测器(ILD)和图像传感器由于其低准确性而很少用于车辆分类。为了提高准确性,作者提出了一种使用反向传播神经网络的ILD新算法。在改进的算法中,神经网络的输入是频率和频率波形的变化率。输出是五辆分类车辆。该算法在测试现场进行了评估,识别率为91.5%。结果证明,与基于ILD的传统方法相比,该算法提高了车辆分类的准确性。

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