Simulating realistic radar data has the potential to significantly accelerate the development of data-driven approaches to radar processing. However, it is fraught with difficulty due to the notoriously complex image formation process. Here we propose to learn a radar sensor model capable of synthesising faithful radar observations based on simulated elevation maps. In particular, we adopt an adversarial approach to learning a forward sensor model from unaligned radar examples. In addition, modelling the backward model encourages the output to remain aligned to the world state through a cyclical consistency criterion. The backward model is further constrained to predict elevation maps from real radar data that are grounded by partial measurements obtained from corresponding lidar scans. Both models are trained in a joint optimisation. We demonstrate the efficacy of our approach by evaluating a down-stream segmentation model trained purely on simulated data in a real-world deployment. This achieves performance within four percentage points of the same model trained entirely on real data.
翻译:模拟现实的雷达数据有可能大大加速开发以数据驱动的雷达处理方法,但是由于臭名昭著的复杂图像形成过程,该模型充满了困难。我们在这里建议学习一个雷达传感器模型,能够根据模拟高地地图合成忠实的雷达观测。特别是,我们采用一种对抗性方法,从不对称的雷达实例中学习前方传感器模型。此外,模拟后向模型鼓励产出通过周期一致性标准保持与世界状态的一致。后向模型还难以预测由相应的激光雷达扫描部分测量结果为基础的真实雷达数据所显示的海拔图。两种模型都经过联合优化培训。我们通过评价纯粹在现实世界部署中模拟数据培训的下流分层模型,展示了我们的方法的功效。这在完全根据真实数据培训的同一模型的四个百分点内实现绩效。