Radar sensors are crucial for environment perception of driver assistance systems as well as autonomous cars. Key performance factors are a fine range resolution and the possibility to directly measure velocity. With a rising number of radar sensors and the so far unregulated automotive radar frequency band, mutual interference is inevitable and must be dealt with. Sensors must be capable of detecting, or even mitigating the harmful effects of interference, which include a decreased detection sensitivity. In this paper, we evaluate a Convolutional Neural Network (CNN)-based approach for interference mitigation on real-world radar measurements. We combine real measurements with simulated interference in order to create input-output data suitable for training the model. We analyze the performance to model complexity relation on simulated and measurement data, based on an extensive parameter search. Further, a finite sample size performance comparison shows the effectiveness of the model trained on either simulated or real data as well as for transfer learning. A comparative performance analysis with the state of the art emphasizes the potential of CNN-based models for interference mitigation and denoising of real-world measurements, also considering resource constraints of the hardware.
翻译:雷达传感器对于对驱动器援助系统以及自主汽车的环境认识至关重要。关键性能因素是精细的距离分辨率和直接测量速度的可能性。随着雷达传感器和迄今不受管制的汽车雷达频率频带数量的增加,相互干扰是不可避免的,必须加以处理。传感器必须能够探测,甚至减轻干扰的有害影响,包括检测敏感度降低。在本文件中,我们评估以革命神经网络为基础的减轻真实世界雷达测量干扰的方法。我们把实际测量与模拟干扰结合起来,以便产生适合模型培训的输入输出数据。我们根据广泛的参数搜索,分析模拟和测量数据与模型复杂关系的性能。此外,有限的抽样性能比较表明在模拟数据或真实数据以及转移学习方面受过训练的模型的有效性。与最新技术比较性业绩分析强调CNN的干扰减缓和排除真实世界测量模型的潜力,同时也考虑到硬件的资源限制。