无人驾驶汽车的监督学习方法

Abdul Kadar Muhammad Masum, Md. Abdur Rahman, Mohammed Shahbaz Abdullah, Sayem Bin Sarwar Chowdhury, Tanvir Bin Faysal Khan, Md. Kaiser Raihan
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引用次数: 1

摘要

在对驾驶问题做出最优决策的情况下,人的表现容易出错。这是由于缺乏专注或由于人性的某些缺陷特征。这是我国道路交通事故发生的核心原因之一。为了消除这一事实,自动驾驶汽车系统可能是一个深刻的解决方案。在现代技术方面,也有更高的追求理念。为了解决这些问题,我们尝试利用计算机视觉和基于神经网络的学习过程来实现自动驾驶汽车系统。该系统从摄像机的图像帧中学习,并根据每一帧学习实时方向指令。然后通过神经网络将学习到的帧与当前帧进行匹配,实现自主运动。它还能够检测障碍物、停车和交通信号,并采取相应的行动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Supervised Learning Approach to An Unmanned Autonomous Vehicle
Human performance is prone to error in case of taking optimal decision on driving issues. It is due to the lack of concentration or because of some faulty characteristics of human nature. This is one of the core reasons for road accidents in our country. To diminish away this fact, autonomous vehicle system can be a profound solution. Also in modern technological aspects, it is higher seeking concept now. Addressing these events, we attempted to implement an autonomous vehicle system with the aid of computer vision and neural network based learning process. The system learns from image frames from a camera and real-time direction command corresponding to every frame. Then it moves autonomously by matching the learned frames with the current frames through neural network. It is also capable of detecting obstacle, stop and traffic signals and act accordingly.
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