4.6 Article

GoonDAE: Denoising-Based Driver Assistance for Off-Road Teleoperation

期刊

IEEE ROBOTICS AND AUTOMATION LETTERS
卷 8, 期 4, 页码 2405-2412

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LRA.2023.3250008

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Telerobotics and teleoperation; deep learning methods; human-robot collaboration; driver assistance systems; off-road driving

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Due to limitations in autonomous driving technology, teleoperation is widely used in dangerous situations like military operations. However, the effectiveness of teleoperated driving depends on the skill level of the driver. In this letter, we propose GoonDAE, a novel denoising-based driver assistance method that enhances the stability of teleoperated off-road driving for unskilled drivers. By training GoonDAE using control inputs from skilled drivers and sensor data from simulated off-road environments, our experiments show significant improvement in the driving stability of unskilled drivers.
Due to the limitations of autonomous driving technology, teleoperation is used extensively in hazardous environments such as military operations. However, the performance of teleoperated driving is primarily influenced by the driver's skill level. In other words, unskilled drivers need extensive training for teleoperation in harsh and unusual environments, such as off-road. In this letter, we propose GoonDAE, a novel denoising-based real-time driver assistance method that enables stable teleoperated off-road driving. We introduce a denoising autoencoder (DAE) based on a skip-connected long short-term memory (LSTM) to assist the unskilled driver control input through denoising. In this approach, it is assumed that the control input of an unskilled driver is equivalent to that of a skilled driver with noise. We train GoonDAE using the skilled driver control inputs and sensor data collected from our simulated off-road driving environment. Our experiments in the simulated off-road environment show that GoonDAE significantly improves the driving stability of unskilled drivers.

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