Camera and Lidar processing have been revolutionized with the rapid development of deep learning model architectures. Automotive radar is one of the crucial elements of automated driver assistance and autonomous driving systems. Radar still relies on traditional signal processing techniques, unlike camera and Lidar based methods. We believe this is the missing link to achieve the most robust perception system. Identifying drivable space and occupied space is the first step in any autonomous decision making task. Occupancy grid map representation of the environment is often used for this purpose. In this paper, we propose PolarNet, a deep neural model to process radar information in polar domain for open space segmentation. We explore various input-output representations. Our experiments show that PolarNet is a effective way to process radar data that achieves state-of-the-art performance and processing speeds while maintaining a compact size.
翻译:随着深层学习模型结构的迅速发展,摄像机和激光雷达处理已经革命化了。汽车雷达是自动驱动器协助和自主驱动系统的关键内容之一。雷达仍然依赖传统的信号处理技术,不同于相机和激光雷达方法。我们认为这是实现最强感知系统所缺少的环节。确定可驾驶空间和占用空间是任何自主决策任务的第一步。环境的占用网图显示经常用于这一目的。本文提出极地网,这是一个在极地域处理雷达信息的深神经模型,用于开放空间分割。我们探索各种输入输出图示。我们的实验显示,极地网是处理雷达数据的有效方法,它能够达到最先进的性能和处理速度,同时保持紧凑的尺寸。