Parallelized and Randomized Adversarial Imitation Learning for
Safety-Critical Self-Driving Vehicles
- URL: http://arxiv.org/abs/2112.14710v1
- Date: Sun, 26 Dec 2021 23:42:49 GMT
- Title: Parallelized and Randomized Adversarial Imitation Learning for
Safety-Critical Self-Driving Vehicles
- Authors: Won Joon Yun, MyungJae Shin, Soyi Jung, Sean Kwon, and Joongheon Kim
- Abstract summary: It is essential to consider reliable ADAS function coordination to control the driving system, safely.
This paper proposes a randomized adversarial imitation learning (RAIL) algorithm.
The proposed method is able to train the decision maker that deals with the LIDAR data and controls the autonomous driving in multi-lane complex highway environments.
- Score: 11.463476667274051
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Self-driving cars and autonomous driving research has been receiving
considerable attention as major promising prospects in modern artificial
intelligence applications. According to the evolution of advanced driver
assistance system (ADAS), the design of self-driving vehicle and autonomous
driving systems becomes complicated and safety-critical. In general, the
intelligent system simultaneously and efficiently activates ADAS functions.
Therefore, it is essential to consider reliable ADAS function coordination to
control the driving system, safely. In order to deal with this issue, this
paper proposes a randomized adversarial imitation learning (RAIL) algorithm.
The RAIL is a novel derivative-free imitation learning method for autonomous
driving with various ADAS functions coordination; and thus it imitates the
operation of decision maker that controls autonomous driving with various ADAS
functions. The proposed method is able to train the decision maker that deals
with the LIDAR data and controls the autonomous driving in multi-lane complex
highway environments. The simulation-based evaluation verifies that the
proposed method achieves desired performance.
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