Nguyen NgocBinh, Pham MinhNghia, Doan Van-Sang, Le VanNhu
Faculty of Radio Electronics Engineering, Le Quy Don Technical University, Hanoi, Vietnam.
VietNam Naval Academy, Nha Trang, Khanh Hoa, Vietnam.
PLoS One. 2024 Aug 1;19(8):e0308045. doi: 10.1371/journal.pone.0308045. eCollection 2024.
Nowadays, classifying human activities is applied in many essential fields, such as healthcare, security monitoring, and search and rescue missions. Radar sensor-based human activity classification is regarded as a superior approach in comparison to other techniques, such as visual perception-based methodologies and wearable gadgets. However, noise usually exists throughout the process of extracting raw radar signals, decreasing the quality and reliability of the extracted features. This paper presents a novel method for removing white Gaussian noise from raw radar signals using a denoising algorithm before classifying human activities using a deep convolutional neural network (DCNN). Specifically, the denoising algorithm is used as a preprocessing step to remove white Gaussian noise from the input raw radar signal. After that, a lightweight Cross-Residual Convolutional Neural Network (CRCNN) with adaptable cross-residual connections is suggested for classification. The analysis results show that the denoising algorithm with a range-bin interval of 3 and a cut-threshold value of 3 achieves the best denoising effect. When the denoising algorithm was applied to the dataset, CRCNN improved the right classification rate by up to 10% compared to the recognition results achieved with the original noise-added dataset. Additionally, a comparison of the CRCNN with the denoising algorithm solution with six cutting-edge DCNNs was conducted. The experimental results reveal that the proposed model greatly outperforms the others.
如今,人类活动分类在许多重要领域都有应用,如医疗保健、安全监控以及搜索救援任务。与其他技术(如基于视觉感知的方法和可穿戴设备)相比,基于雷达传感器的人类活动分类被视为一种更优越的方法。然而,在提取原始雷达信号的整个过程中通常存在噪声,这降低了所提取特征的质量和可靠性。本文提出了一种在使用深度卷积神经网络(DCNN)对人类活动进行分类之前,利用去噪算法从原始雷达信号中去除高斯白噪声的新方法。具体而言,该去噪算法被用作预处理步骤,以从输入的原始雷达信号中去除高斯白噪声。之后,提出了一种具有自适应交叉残差连接的轻量级交叉残差卷积神经网络(CRCNN)用于分类。分析结果表明,范围区间为3且截止阈值为3的去噪算法实现了最佳去噪效果。当将该去噪算法应用于数据集时,与使用原始添加噪声的数据集所获得的识别结果相比,CRCNN将正确分类率提高了多达10%。此外,还将CRCNN与具有去噪算法解决方案的六种前沿DCNN进行了比较。实验结果表明,所提出的模型大大优于其他模型。