论文标题
在卡拉自动驾驶模拟器中插入真实代理行为
Insertion of real agents behaviors in CARLA autonomous driving simulator
论文作者
论文摘要
由于需要快速原型制作和广泛的测试,模拟在自主驾驶中的作用变得越来越重要。基于物理的模拟的使用涉及以合理的成本的多种好处和优势,同时消除了原型,驾驶员和脆弱的道路使用者的风险。但是,有两个主要局限性。首先,众所周知的现实差距是指现实与模拟之间的差异,这阻止了模拟自主驾驶体验实现有效的现实性能。其次,缺乏有关真实代理商的行为的经验知识,包括备用驾驶员或乘客以及其他道路使用者,例如车辆,行人或骑自行车的人。代理模拟通常是根据实际数据进行确定性,随机概率或生成的,但它不能代表与特定模拟方案相互作用的真实代理的行为。在本文中,我们提出了一个初步框架,以实现真实试剂与模拟环境(包括自动驾驶汽车)之间的实时相互作用,并从多个视图中从模拟传感器数据中生成合成序列,这些序列可用于培训依赖行为模型的预测系统。我们的方法将沉浸式虚拟现实和人类运动捕获系统与CARLA模拟器进行自主驾驶。我们描述了提出的硬件和软件体系结构,并讨论所谓的行为差距或存在。我们提出了支持这种方法的潜力并讨论未来步骤的初步但有希望的结果。
The role of simulation in autonomous driving is becoming increasingly important due to the need for rapid prototyping and extensive testing. The use of physics-based simulation involves multiple benefits and advantages at a reasonable cost while eliminating risks to prototypes, drivers and vulnerable road users. However, there are two main limitations. First, the well-known reality gap which refers to the discrepancy between reality and simulation that prevents simulated autonomous driving experience from enabling effective real-world performance. Second, the lack of empirical knowledge about the behavior of real agents, including backup drivers or passengers and other road users such as vehicles, pedestrians or cyclists. Agent simulation is usually pre-programmed deterministically, randomized probabilistically or generated based on real data, but it does not represent behaviors from real agents interacting with the specific simulated scenario. In this paper we present a preliminary framework to enable real-time interaction between real agents and the simulated environment (including autonomous vehicles) and generate synthetic sequences from simulated sensor data from multiple views that can be used for training predictive systems that rely on behavioral models. Our approach integrates immersive virtual reality and human motion capture systems with the CARLA simulator for autonomous driving. We describe the proposed hardware and software architecture, and discuss about the so-called behavioural gap or presence. We present preliminary, but promising, results that support the potential of this methodology and discuss about future steps.