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Real-Time Gesture Recognition with Shallow Convolutional Neural Networks Employing an Ultra Low Cost Radar System

机译:利用超低成本雷达系统的浅层卷积神经网络进行实时手势识别

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Ultra-low-cost radar hardware (HW) in combination with low-cost processing units is investigated in order to create and evaluate a holistic ultra-low-cost gesture recognition system. We study the real-time performance of novel machine learning (nML) methods: neural networks (NNs), in particular shallow architectures of convolutional neural networks (CNNs). The real-time performance of each approach is judged by computational complexity, prediction time, accuracy, and false-positive rate (FPR). As HW, a two-channel radar system with continuous wave (CW) modulation at a carrier frequency of 10 GHz has been employed throughout the investigations. The algorithms are designed, trained, evaluated, and juxtaposed. The results show that the classification process on low-cost HW is feasible and allows to achieve accuracies of 97.9% and FPRs of 1.72%, all of which with a response time of less than 180 ms.
机译:为了创建和评估整体超低成本手势识别系统,研究了超低成本雷达硬件(HW)与低成本处理单元的结合。我们研究了新型机器学习(nML)方法的实时性能:神经网络(NNs),特别是卷积神经网络(CNNs)的浅层架构。每种方法的实时性能由计算复杂性,预测时间,准确性和假阳性率(FPR)来判断。作为硬件,在整个研究中都采用了具有10 GHz载波频率的连续波(CW)调制的两通道雷达系统。设计,训练,评估和并置算法。结果表明,针对低成本硬件的分类过程是可行的,并且可以实现97.9%的准确度和1.72%的FPR,所有这些响应时间均小于180毫秒。

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