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Measurement Range Increase of a Phase-Shift Laser Rangefinder Using a CMOS Analog Neural Network

机译:使用CMOS模拟神经网络的相移激光测距仪的测量范围增加

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An analog neural network (NN) was designed, implemented in 0.35-$mu hbox{m}$ complementary metal–oxide–semiconductor technology, and tested to increase the distance measurement interval of a phase-shift laser rangefinder and to classify different types of surfaces for varying distances and incidence angles. This paper focuses on the ability of the NN to remove the indecision on the distance value deduced from the phase-shift measurement. The NN architecture is a multilayer perceptron (MLP) with two inputs, three processing neurons in the hidden layer, and one output neuron. The amplified and filtered photoelectric signal provided by the rangefinder is set at one input. The NN is trained so that its output voltage is proportional to the distance for easy evaluation. By combining both measurements coming from the rangefinder and the NN, it is possible to obtain a resolution of 50 $muhbox{m}$ on a distance interval [0.5 m; 3.2 m], whereas the rangefinder measurement range width is limited to 0.9 m. This paper presents the complete system, concentrating more on the training phase of the implemented NN and on the experimental results.
机译:设计了一个模拟神经网络(NN),以0.35-μmhbox {m} $互补金属-氧化物-半导体技术实现,并经过测试以增加相移激光测距仪的距离测量间隔并对不同类型的距离和入射角变化的表面。本文着重于神经网络消除由相移测量得出的距离值的不确定性的能力。 NN体系结构是一个多层感知器(MLP),具有两个输入,隐藏层中的三个处理神经元和一个输出神经元。测距仪提供的经过放大和滤波的光电信号被设置为一个输入。对NN进行训练,使其输出电压与距离成比例,以便于评估。通过将来自测距仪和NN的两个测量值结合起来,可以在[0.5 m的距离间隔上获得50 $ muhbox {m} $的分辨率。 3.2 m],而测距仪的测量范围宽度限制为0.9 m。本文介绍了完整的系统,将更多的精力集中在已实现的NN的训练阶段和实验结果上。

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