2020
DOI: 10.1109/access.2020.3017883
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A Survey on Deep Learning for Steering Angle Prediction in Autonomous Vehicles

Abstract: Steering angle prediction is critical in the control of Autonomous Vehicles (AVs) and has attracted the attention of researchers, manufacturers, and insurance companies in the automotive industry. Different Deep Learning (DL) architectures have been applied to predict the steering angle of AVs in various scenarios. A survey on steering angle prediction based on deep learning algorithms can help expert researchers identify those areas that require development. Also, novice researchers can use the survey as a st… Show more

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Cited by 43 publications
(20 citation statements)
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References 81 publications
(153 reference statements)
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“…Recently, Gidado et al [4] presented a survey paper which covers the following topics: deep learning architectures (deep reinforcement learning and convolutional neural network); application of deep learning architectures for steering angle prediction, longitudinal & lateral control; history and other details of frameworks being used for designing and training ANN architectures; analysis of year-wise and frequency wise publication trend of deep learning applications in steering control. Oussama et al [5] presented a short literature review on computer vision and deep learning approach for steering angle prediction.…”
Section: A Existing Similar Recent Studiesmentioning
confidence: 99%
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“…Recently, Gidado et al [4] presented a survey paper which covers the following topics: deep learning architectures (deep reinforcement learning and convolutional neural network); application of deep learning architectures for steering angle prediction, longitudinal & lateral control; history and other details of frameworks being used for designing and training ANN architectures; analysis of year-wise and frequency wise publication trend of deep learning applications in steering control. Oussama et al [5] presented a short literature review on computer vision and deep learning approach for steering angle prediction.…”
Section: A Existing Similar Recent Studiesmentioning
confidence: 99%
“…Due to remarkable performance in visual imagery understanding, CNN and its variants are being used for the task of steering angle prediction. Various CNN architectures, differing in number of layers and neurons in each layer, have been explored for the purpose of steering angle prediction [4], [87], [91]- [96].…”
Section: ) Nn Architecture Formulationmentioning
confidence: 99%
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“…Given the expensive nature of this technology in terms of computational resources and price, it is difficult to assemble into a single package ready for level 4 or 5 deployments. While steering angle predictions have become accurate over time, current models still suffer failures due to high vehicle speeds, sub-optimal obstacle avoidance, and the inability to use RGB input as the sole signalling feature as described in [16]. A solution is presented to the steering angle prediction problem to improve accuracy and robustness and enable a reduction in the amount of sensor hardware, data, and software computation necessary to incorporate into an autonomous vehicle.…”
Section: Problem Descriptionmentioning
confidence: 99%
“…Once the model learns, it can then autonomously predict steering angles without human intervention. For this type of supervised learning steering angle prediction problem, the convolutional neural network (CNN) and its variants are mostly employed due to their remarkable performance in visual imagery understanding [5]. However, the performance of these networks strongly depends on their architecture, design, and training parameters [6].…”
Section: Introductionmentioning
confidence: 99%