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Modular Neural Network for Learning Visual Features, Routes, and Operation Through Human Driving Data Toward Automatic Driving System

机译:用于学习视觉功能,路线和操作通过人类驾驶数据朝向自动驱动系统的模块化神经网络

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This paper proposes an automatic driving system based on a combination of modular neural networks processing human driving data. Research on automatic driving vehicles has been actively conducted in recent years. Machine learning techniques are often utilized to realize an automatic driving system capable of imitating human driving operations. Almost all of them adopt a large monolithic learning module, as typified by deep learning. However, it is inefficient to use a monolithic deep learning module to learn human driving operations (accelerating, braking, and steering) using the visual information obtained from a human driving a vehicle. We propose combining a series of modular neural networks that independently learn visual feature quantities, routes, and driving maneuvers from human driving data, thereby imitating human driving operations and efficiently learning a plurality of routes. This paper demonstrates the effectiveness of the proposed method through experiments using a small vehicle.
机译:本文提出了一种基于模块化神经网络处理人员驾驶数据的组合的自动驱动系统。近年来积极进行自动驾驶车辆的研究。通常利用机器学习技术来实现能够模仿人类驾驶操作的自动驱动系统。几乎所有这些都采用了一个大型单片学习模块,如深度学习为代表。然而,使用单片深度学习模块使用从驾驶车辆的人类获得的视觉信息学习人的驾驶操作(加速,制动和转向)来效率低下。我们建议将一系列模块化神经网络组合,可从人类驾驶数据中独立地学习视觉特征量,路线和驾驶操纵,从而模仿人类驾驶操作和有效地学习多个路线。本文通过使用小型车辆的实验说明了所提出的方法的有效性。

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