Qiu Zhimin, Shao Jinju, Guo Dong, Yin Xuehao, Zhai Zhipeng, Duan Zhibing, Xu Yi
School of Transportation and Vehicle Engineering, Shandong University of Technology, Zibo 255049, China.
The Intelligent Connected Vehicle Laboratory, Shandong University of Technology, Zibo 255049, China.
Sensors (Basel). 2025 Jun 18;25(12):3802. doi: 10.3390/s25123802.
With the rapid progress of intelligent vehicle technology, the accurate recognition of road surface types and conditions has emerged as a crucial technology for improving the safety and comfort levels in autonomous driving. This paper puts forward a multi-feature fusion approach for road surface identification. Relying on a 24 GHz millimeter-wave radar, statistical features are combined with wavelet transform techniques. This combination enables the efficient classification of diverse road surface types and conditions. Firstly, the discriminability of radar echo signals corresponding to different road surface types is verified via statistical analysis. During this process, six-dimensional statistical features that display remarkable differences are extracted. Subsequently, a novel radar data reconstruction approach is presented. This method involves fitting discrete echo signals into coordinate curves. Then, discrete wavelet transform is utilized to extract both low-frequency and high-frequency features, thereby strengthening the spatio-temporal correlation of the signals. The low-frequency information serves to capture general characteristics, whereas the high-frequency information reflects detailed features. The statistical features and wavelet transform features are fused at the feature level, culminating in the formation of a 56-dimensional feature vector. Four machine learning models, namely the Wide Neural Network (WNN), K-Nearest Neighbors (KNN), Support Vector Machine (SVM), and Kernel methods, are employed as classifiers for both training and testing purposes. Experiments were executed with 8865 samples obtained from a real-vehicle platform. These samples comprehensively represented 12 typical road surface types and conditions. The experimental outcomes clearly indicate that the proposed method is capable of attaining a road surface type identification accuracy as high as 94.2%. As a result, it furnishes an efficient and cost-efficient road perception solution for intelligent driving systems. This research validates the potential application of millimeter-wave radar in intricate road environments and offers both theoretical underpinning and practical support for the advancement of autonomous driving technology.
随着智能车辆技术的飞速发展,准确识别路面类型和状况已成为提高自动驾驶安全性和舒适性的关键技术。本文提出了一种用于路面识别的多特征融合方法。依托24GHz毫米波雷达,将统计特征与小波变换技术相结合。这种结合能够对不同的路面类型和状况进行有效分类。首先,通过统计分析验证了不同路面类型对应的雷达回波信号的可区分性。在此过程中,提取了具有显著差异的六维统计特征。随后,提出了一种新颖的雷达数据重建方法。该方法包括将离散回波信号拟合到坐标曲线中。然后,利用离散小波变换提取低频和高频特征,从而增强信号的时空相关性。低频信息用于捕捉一般特征,而高频信息反映细节特征。统计特征和小波变换特征在特征层面进行融合,最终形成一个56维特征向量。采用宽神经网络(WNN)、K近邻(KNN)、支持向量机(SVM)和核方法这四种机器学习模型作为分类器进行训练和测试。使用从实车平台获取的8865个样本进行实验。这些样本全面代表了12种典型的路面类型和状况。实验结果清楚地表明,所提出的方法能够达到高达94.2%的路面类型识别准确率。因此,它为智能驾驶系统提供了一种高效且经济高效的道路感知解决方案。本研究验证了毫米波雷达在复杂道路环境中的潜在应用,并为自动驾驶技术的发展提供了理论支撑和实践支持。