论文标题
Goondae:基于Denoising的驾驶员协助
GoonDAE: Denoising-Based Driver Assistance for Off-Road Teleoperation
论文作者
论文摘要
由于自动驾驶技术的局限性,远距离被广泛用于军事行动等危险环境中。但是,远程手工的驾驶性能在很大程度上取决于驾驶员的技能水平。此外,非熟练驾驶员需要大量的培训时间,以在不寻常和严峻的环境中进行远程运行。为了解决这个问题,我们提出了一种基于Denoising的新型驾驶员援助方法,即Goondae,用于实时远程驾驶。假定非熟练的驾驶员控制输入与熟练的驾驶员控制输入相同,但噪声相同。我们设计了一个基于跳过的长短期内存(LSTM)的Denoising自动编码器(DAE)型号,以通过Denoising来帮助非熟练的驾驶员控制输入。拟议的Goondae接受了从我们模拟的越野驾驶环境中收集的熟练驾驶员控制输入和传感器数据的培训。为了评估Goondae,我们在模拟环境中与非熟练驱动器进行了实验。结果表明,在驾驶稳定性方面,提出的系统大大提高了驾驶性能。
Because of the limitations of autonomous driving technologies, teleoperation is widely used in dangerous environments such as military operations. However, the teleoperated driving performance depends considerably on the driver's skill level. Moreover, unskilled drivers need extensive training time for teleoperations in unusual and harsh environments. To address this problem, we propose a novel denoising-based driver assistance method, namely GoonDAE, for real-time teleoperated off-road driving. The unskilled driver control input is assumed to be the same as the skilled driver control input but with noise. We designed a skip-connected long short-term memory (LSTM)-based denoising autoencoder (DAE) model to assist the unskilled driver control input by denoising. The proposed GoonDAE was trained with skilled driver control input and sensor data collected from our simulated off-road driving environment. To evaluate GoonDAE, we conducted an experiment with unskilled drivers in the simulated environment. The results revealed that the proposed system considerably enhanced driving performance in terms of driving stability.