基于MIMO雷达传感器和空频域信息的手势识别

T. Tseng, Jian-Jiun Ding
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引用次数: 0

摘要

随着雷达系统的发展,雷达传感器的手势识别变得越来越容易操作,分辨率也越来越高。目前,雷达手势识别频率采用(多输入多输出)MIMO雷达作为传感器,因为它具有更好的空间分辨率。本文提出了一种基于MIMO雷达传感器的手势识别方法,可以区分五种手势:向左、向右、轻拍、推、拉。从雷达传感器接收数据后,我们首先对距离多普勒图的时间序列应用二维快速傅里叶变换(2D-FFT)。接下来,我们检测移动目标的距离、速度和角度值随时间的变化。最后,以目标的时变特征为参数,将分类回归树(CART)算法应用于采集的数据集。使用基于决策树的分类器,该系统的总体识别率达到94%。实验结果表明,该系统在多手势分类中具有较好的应用前景。
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Hand Gesture Recognition via MIMO Radar Sensors and Space-Frequency Domain Information
With the development of radar systems, hand gesture recognition of radar sensors has become easier to operate, and the resolution has increased. Nowadays, radar gesture recognition frequency employs (multiple-input and multiple-output) MIMO radar as a sensor since it has a better spatial resolution. This article proposes a hand gesture recognition based on a MIMO radar sensor, which can differentiate five gestures: swipe left, swipe right, pat, push, and pull. After receiving the data from the radar sensor, we first apply a two-dimensional Fast-Fourier Transform (2D-FFT) for a time series of range-Doppler maps. Next, we detect the moving target range, velocity, and angle values through time. Finally, the classification and regression tree (CART) algorithm is applied to a collected dataset, with targets’ time-variant characteristics as the parameters. The overall recognition rate of 94% is obtained from the proposed system using a decision-tree-based classifier. The experiment results show that this gesture-recognition system is promising in classifying multiple gestures.
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