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A Signal Denoising Method of Gesture Radar Based on Weighted Principal Component Analysis and Improved Wavelet Threshold

机译:基于加权主成分分析和改进小波阈值的手势雷达信号降噪方法

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When using radar to recognize gesture, radar echo signals are susceptible to noise. In order to improve detection resolution and data interpretation quality of gesture radar, this paper proposes a new denoising algorithm based on weighted principal component analysis and improved wavelet threshold, named WPCA-IWT denoising algorithm. First, radar echo data are standardized and each echo data’s variance are calculated. Each echo data is multiplied by it’s corresponding variance to complete weighting operation. By using WPCA processing, the dimension of echo data is reduced and echo signal’s principal components are extracted. Then, a new threshold function is proposed and an improved wavelet threshold denoising algorithm is designed to denoise principal components. Finally, denoised principal components are multiplied with an eigenvector matrix to reconstruct radar echo. The proposed WPCA-IWT denoising algorithm has obvious advantages at the aspects of efficiency and denoising effect. Both simulation and on-site radar data experiments verified the effectiveness of the proposed algorithm.
机译:使用雷达识别手势时,雷达回波信号容易受到噪声的影响。为了提高姿态雷达的检测分辨率和数据解释质量,提出了一种基于加权主成分分析和改进的小波阈值的去噪算法,即WPCA-IWT去噪算法。首先,将雷达回波数据标准化并计算每个回波数据的方差。每个回波数据乘以其对应的方差即可完成加权操作。通过使用WPCA处理,减小了回波数据的维数,并提取了回波信号的主要成分。然后,提出了一种新的阈值函数,并设计了一种改进的小波阈值去噪算法对主成分进行去噪。最后,将去噪后的主成分与特征向量矩阵相乘,以重建雷达回波。提出的WPCA-IWT去噪算法在效率和去噪效果方面具有明显的优势。仿真和现场雷达数据实验均证明了该算法的有效性。

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