SuperDriverAI: Towards Design and Implementation for End-to-End Learning-Based Autonomous Driving

Shunsuke Aoki, Issei Yamamoto, Daiki Shiotsuka, Yuichi Inoue, Kento Tokuhiro, Keita Miwa
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Abstract

Fully autonomous driving has been widely studied and is becoming increasingly feasible. However, such autonomous driving has yet to be achieved on public roads, because of various uncertainties due to surrounding human drivers and pedestrians. In this paper, we present an end-to-end learning-based autonomous driving system named SuperDriver AI, where Deep Neural Networks (DNNs) learn the driving actions and policies from the experienced human drivers and determine the driving maneuvers to take while guaranteeing road safety. In addition, to improve robustness and interpretability, we present a slit model and a visual attention module. We build a data-collection system and emulator with real-world hardware, and we also test the SuperDriver AI system with real-world driving scenarios. Finally, we have collected 150 runs for one driving scenario in Tokyo, Japan, and have shown the demonstration of SuperDriver AI with the real-world vehicle.
SuperDriverAI:面向端到端学习自动驾驶的设计与实现
全自动驾驶已经得到了广泛的研究,并且正变得越来越可行。然而,由于周围人类驾驶员和行人的各种不确定性,这种自动驾驶尚未在公共道路上实现。在本文中,我们提出了一个端到端学习的自动驾驶系统,名为SuperDriver AI,其中深度神经网络(dnn)从经验丰富的人类驾驶员那里学习驾驶动作和策略,并在保证道路安全的同时确定驾驶动作。此外,为了提高鲁棒性和可解释性,我们提出了狭缝模型和视觉注意模块。我们用真实世界的硬件构建了一个数据收集系统和模拟器,我们还用真实世界的驾驶场景测试了SuperDriver人工智能系统。最后,我们为日本东京的一个驾驶场景收集了150次运行,并在现实世界的车辆上展示了SuperDriver AI的演示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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