首页|Deep Imitation Learning for Autonomous Vehicles Based on Convolutional Neural Networks

Deep Imitation Learning for Autonomous Vehicles Based on Convolutional Neural Networks

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Providing autonomous systems with an effective quantity and quality of information from a desired task is challenging.In particular,autonomous vehicles,must have a reliable vision of their workspace to robustly accomplish driving functions.Speaking of machine vision,deep learning techniques,and specifically convolutional neural networks,have been proven to be the state of the art technology in the field.As these networks typically involve millions of parameters and elements,designing an optimal architecture for deep learning structures is a difficult task which is globally under investigation by researchers.This study experimentally evaluates the impact of three major architectural properties of convolutional networks,including the number of layers,filters,and filter size on their performance.In this study,several models with different properties are developed,equally trained,and then applied to an autonomous car in a realistic simulation environment.A new ensemble approach is also proposed to calculate and update weights for the models regarding their mean squared error values.Based on design properties,performance results are reported and compared for further investigations.Surprisingly,the number of filters itself does not largely affect the performance efficiency.As a result,proper allocation of filters with different kernel sizes through the layers introduces a considerable improvement in the performance.Achievements of this study will provide the researchers with a clear clue and direction in designing optimal network architectures for deep learning purposes.

Autonomous vehiclesconvolutional neural networksdeep learningimitation learning

Parham M.Kebria、Abbas Khosravi、Syed Moshfeq Salaken、Saeid Nahavandi

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Institute for Intelligent Systems Research and Innovation(IISRI), Deakin University, Waurn Ponds, VIC 3216, Australia

2020

自动化学报(英文版)
中国自动化学会,中国科学院自动化研究所,中国科技出版传媒股份有限公司

自动化学报(英文版)

CSTPCDCSCDSCIEI
ISSN:2329-9266
年,卷(期):2020.7(1)
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