Automotive radar provides reliable environmental perception in all-weather conditions with affordable cost, but it hardly supplies semantic and geometry information due to the sparsity of radar detection points. With the development of automotive radar technologies in recent years, instance segmentation becomes possible by using automotive radar. Its data contain contexts such as radar cross section and micro-Doppler effects, and sometimes can provide detection when the field of view is obscured. The outcome from instance segmentation could be potentially used as the input of trackers for tracking targets. The existing methods often utilize a clustering-based classification framework, which fits the need of real-time processing but has limited performance due to minimum information provided by sparse radar detection points. In this paper, we propose an efficient method based on clustering of estimated semantic information to achieve instance segmentation for the sparse radar detection points. In addition, we show that the performance of the proposed approach can be further enhanced by incorporating the visual multi-layer perceptron. The effectiveness of the proposed method is verified by experimental results on the popular RadarScenes dataset, achieving 89.53% mean coverage and 86.97% mean average precision with the IoU threshold of 0.5, which is superior to other approaches in the literature. More significantly, the consumed memory is around 1MB, and the inference time is less than 40ms, indicating that our proposed algorithm is storage and time efficient. These two criteria ensure the practicality of the proposed method in real-world systems.
翻译:汽车雷达在全天候条件下提供可靠的环境感知,费用低廉,但由于雷达探测点的广度,现有方法很难提供语义学和几何学信息。随着近年来汽车雷达技术的发展,使用汽车雷达技术可以进行分解。其数据包含雷达横截段和微多普勒效应等背景,有时在视野模糊时可以提供检测。实例分解结果有可能用作跟踪目标跟踪器的投入。现有方法经常使用基于集群的分类框架,这符合实时处理的需要,但因分散雷达探测点提供的最低信息而导致性能有限。在本文件中,我们建议一种高效的方法,即根据估计的分解信息进行分组,以达到稀散雷达探测点的分解。此外,我们表明,如果将视觉多层感知器纳入,则可以进一步提高拟议方法的性能。提议的这些方法的有效性通过大众雷达Scenes数据集的实验结果得到验证,达到89.53%的平均覆盖率和86.97%的平均性能,但由于稀少的雷达探测点提供了最低限度的信息。在本文件中,我们提出的估计性信息中,估计的分数信息分数信息分数信息分数方法比IMB值标准0.5,则比其他的缩0.5的缩缩缩数标准要高。