论文标题
现成的传感器与实验雷达 - 汽车雷达分类需要多少分辨率?
Off-the-shelf sensor vs. experimental radar -- How much resolution is necessary in automotive radar classification?
论文作者
论文摘要
基于雷达的道路用户检测是自主驾驶应用程序中的重要主题。常规汽车雷达传感器的分辨率导致稀疏数据表示,在随后的信号处理过程中很难完善。另一方面,新的传感器生成正在等待在这个具有挑战性的领域中的应用。在本文中,对不同雷达世代的两个传感器相互评估。评估标准是移动道路用户对象检测和分类任务的性能。为此,比较了两个源自现成的雷达和高分辨率下一代雷达的数据集。特别注意如何组装两个数据集,以使其可比性。使用的对象检测器由聚类算法,特征提取模块和用于分类的复发神经网络集合组成。为了进行评估,所有组件均被单独评估,并且首次整体上评估。这允许指示整体性能改进在管道中的起源。此外,评估两个数据集的概括能力,并讨论了汽车雷达对象检测的重要比较指标。结果显示下一代雷达的明显好处。有趣的是,这些好处实际上并不是由于分类阶段的表现更好,而是由于在聚类阶段的巨大改进而发生。
Radar-based road user detection is an important topic in the context of autonomous driving applications. The resolution of conventional automotive radar sensors results in a sparse data representation which is tough to refine during subsequent signal processing. On the other hand, a new sensor generation is waiting in the wings for its application in this challenging field. In this article, two sensors of different radar generations are evaluated against each other. The evaluation criterion is the performance on moving road user object detection and classification tasks. To this end, two data sets originating from an off-the-shelf radar and a high resolution next generation radar are compared. Special attention is given on how the two data sets are assembled in order to make them comparable. The utilized object detector consists of a clustering algorithm, a feature extraction module, and a recurrent neural network ensemble for classification. For the assessment, all components are evaluated both individually and, for the first time, as a whole. This allows for indicating where overall performance improvements have their origin in the pipeline. Furthermore, the generalization capabilities of both data sets are evaluated and important comparison metrics for automotive radar object detection are discussed. Results show clear benefits of the next generation radar. Interestingly, those benefits do not actually occur due to better performance at the classification stage, but rather because of the vast improvements at the clustering stage.