首页> 外文会议>Instrumentation and Measurement Technology Conference, 2001. IMTC 2001. Proceedings of the 18th IEEE >Using neural networks for high resolution distance measurements in pulsed laser radar
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Using neural networks for high resolution distance measurements in pulsed laser radar

机译:使用神经网络在脉冲激光雷达中进行高分辨率距离测量

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We have developed a new distance measurement method which can obtain distance information directly from the output waveform of pulsed laser radar (PLR). A simple digital signal processing technique and multilayer perceptrons (MLP) have been used to recognize the pulse shape and to obtain the distance information. The method has been implemented in a real PLR for high resolution distance measurements to improve the resolution and to decrease the nonlinearity error. Because of the ability of neural networks in decreasing the noise and preprocessing of the noisy input pulse shapes to the neural network, resolution and nonlinearity were greatly improved. Distance deviation of 53 /spl mu/m-168 /spl mu/m, full width at half power (FWHP) of 70 /spl mu/m-190 /spl mu/m and non-linearity of 187 /spl mu/m have been achieved. All the measurements in the same situation has been performed by using the standard method to extract the distance information from time interval between the reference pulse and the reflected pulse. In comparison with the standard method, resolution in the best case and non-linearity were improved by 86% and 6.5% respectively. In this method if the PLR system is reasonably stable during the measurement, it is possible to use only the reflected pulse from the target to extract the distance information and this makes PLR simpler in hardware. Because the neural network decreases noise, it is possible to make the measurements with the same resolution of standard method but with the lower averaging in sampling unit and this dramatically increase the speed of the measurement.
机译:我们开发了一种新的距离测量方法,该方法可以直接从脉冲激光雷达(PLR)的输出波形中获取距离信息。一种简单的数字信号处理技术和多层感知器(MLP)已用于识别脉冲形状并获得距离信息。该方法已在实际的PLR中实现,用于高分辨率距离测量,以提高分辨率并减少非线性误差。由于神经网络具有降低噪声的能力以及对噪声输入脉冲形状进行预处理的能力,因此极大地提高了分辨率和非线性度。距离偏差为53 / spl mu / m-m / 168-spl mu / m,半功率全宽(FWHP)为70 / spl mu / m-190 / spl mu / m,非线性度为187 / spl mu / m已经实现。通过使用标准方法从参考脉冲和反射脉冲之间的时间间隔中提取距离信息,可以执行相同情况下的所有测量。与标准方法相比,最佳情况下的分辨率和非线性度分别提高了86%和6.5%。在这种方法中,如果PLR系统在测量过程中相当稳定,则可以仅使用来自目标的反射脉冲来提取距离信息,这使得PLR的硬件更加简单。由于神经网络降低了噪声,因此可以使用与标准方法相同的分辨率进行测量,但是采样单位的平均值较低,因此可以大大提高测量速度。

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