We propose a perception imitation method to simulate results of a certain perception model, and discuss a new heuristic route of autonomous driving simulator without data synthesis. The motivation is that original sensor data is not always necessary for tasks such as planning and control when semantic perception results are ready, so that simulating perception directly is more economic and efficient. In this work, a series of evaluation methods such as matching metric and performance of downstream task are exploited to examine the simulation quality. Experiments show that our method is effective to model the behavior of learning-based perception model, and can be further applied in the proposed simulation route smoothly.
翻译:我们提出了一种感知模仿方法,用于模拟特定感知模型的结果,并讨论了一种新的启发式路径,以创建无需合成数据的自动驾驶模拟器。动机是当语义感知结果准备就绪时,原始传感器数据并非总是必要的,因此直接模拟感知更经济、有效。在这项工作中,我们利用一系列评估方法,如匹配度量和下游任务的性能,来检查模拟质量。实验表明,我们的方法是模拟基于学习的感知模型行为有效的,并且可以顺利应用于所提出的模拟路径中。