基于激光雷达的车辆目标识别

Zhang Yang, Ge Pingshu, Xu Jingyi, Zhang Tao, Zhao Qian
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引用次数: 1

摘要

车辆目标识别技术是辅助安全驾驶系统中的一项重要技术,极大地提高了车辆辅助驾驶的安全性。提出了一种结合激光雷达点云数据和机器学习的车辆目标识别方法;该方法首先建立感兴趣区域(ROI),使用体素网格滤波对该区域内的激光雷达点云数据进行下采样,减少处理数据量,然后使用RANSAC(随机采样共识)去除对识别过程无用的接地点,然后使用欧氏聚类进行聚类。设置一个粗糙分类器,首先排除非车辆的障碍物,然后提取每个聚类的特征。采用支持向量机(Support Vector Machine, SVM)作为精确分类器,通过交叉验证和网格搜索对SVM的参数进行优化,以达到最佳分类效果。最后,利用优化后的支持向量机对每个聚类进行识别。实验表明,该方法能有效地检测出ROI内的目标车辆,具有良好的识别精度。
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Lidar-based Vehicle Target Recognition
Vehicle target recognition technology is an important technology in the auxiliary safe driving system, which greatly improves Vehicle safety assist driving. This paper proposes a method to identify vehicle target recognition with lidar point cloud data and machine learning; This method first establishes an ROI (region of interest), and uses voxel grid filter to downsample the lidar point cloud data in this area to reduce the amount of processed data, then use RANSAC (random sampling consensus) to remove ground points that are useless for the recognition process, and then use Euclidean clustering for clustering. A rough classifier is set to initially eliminate obstacles that cannot be vehicles, then the features of each cluster is extracted. SVM (Support Vector Machine) is used as an accurate classifier, the parameters of SVM is optimized through cross-validation and grid search to achieve the best classification effect. Finally, the optimized SVM is used to identify each cluster. Experiments show that this method can effectively detect the target vehicle in the ROI and has a good recognition accuracy.
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