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A convolution neural network based machine learning approach for ultrasonic noise suppression with minimal distortion

机译:基于卷积神经网络的超声噪声抑制具有最小失真的基于机器学习方法

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In this paper we present a novel machine learning approach for noise suppression in the signal generated by automotive industrial grade active ultrasonic sensors. A convolutional neural network (CNN) based machine learning approach is presented. State of art noise suppression methods are also discussed and used as benchmark against the proposed machine learning approach. The results of numerous simulated scenarios as well as actual sensor measurement campaigns are presented and discussed. Several metrics are derived to quantify the quality of the signal and give an indication of the performance of the different approaches of noise suppression. These derived metrics assess the performance of the different approaches in terms of amount of noise suppressed and amount of distortion introduced to the signal of interest.
机译:在本文中,我们提出了一种新的机器学习方法,用于汽车工业级主动超声传感器产生的信号中的噪声抑制方法。介绍了基于卷积神经网络(CNN)的机器学习方法。还讨论了最先进的噪声抑制方法并用作建议的机器学习方法的基准。展示和讨论了许多模拟场景的结果以及实际的传感器测量运动。导出了几个度量来量化信号的质量,并指示不同噪声抑制方法的性能。这些衍生度量评估在抑制的噪声量和引入感兴趣的信号的失真量的情况下评估不同方法的性能。

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