Comparative Transfer Learning Models for End-to-End Self-Driving Car

Yahya Ghufran Khidhir, A. Morad
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引用次数: 1

Abstract

Self-driving automobiles are prominent in science and technology, which affect social and economic development. Deep learning (DL) is the most common area of study in artificial intelligence (AI). In recent years, deep learning-based solutions have been presented in the field of self-driving cars and have achieved outstanding results. Different studies investigated a variety of significant technologies for autonomous vehicles, including car navigation systems, path planning, environmental perception, as well as car control. End-to-end learning control directly converts sensory data into control commands in autonomous driving. This research aims to identify the most accurate pre-trained Deep Neural Network (DNN) for predicting the steering angle of a self-driving vehicle that is suitable to be applied to embedded automotive technologies with limited performance. Three well-known pre-trained models were compared in this study: AlexNet, ResNet18, and DenseNet121. Transfer learning was utilized by modifying the final layer of pre-trained models in order to predict the steering angle of the vehicle. Experiments were conducted on the dataset collected from two different tracks. According to the study's findings, ResNet18 and DenseNet121 have the lowest error percentage for steering angle values. Furthermore, the performance of the modified models was evaluated on predetermined tracks. ResNet18 outperformed DenseNet121 in terms of accuracy, with less deviation from the center of the track, while DenseNet121 demonstrated greater adaptability across multiple tracks, resulting in better performance consistency.
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端到端自动驾驶汽车的比较迁移学习模型
自动驾驶汽车具有突出的科技意义,影响着社会经济的发展。深度学习(DL)是人工智能(AI)中最常见的研究领域。近年来,基于深度学习的解决方案已经出现在自动驾驶汽车领域,并取得了突出的成果。不同的研究调查了自动驾驶汽车的各种重要技术,包括汽车导航系统、路径规划、环境感知以及汽车控制。在自动驾驶中,端到端学习控制直接将感知数据转换为控制命令。本研究旨在确定最准确的预训练深度神经网络(DNN),用于预测自动驾驶汽车的转向角度,适用于性能有限的嵌入式汽车技术。本研究比较了三个著名的预训练模型:AlexNet、ResNet18和DenseNet121。通过修改预训练模型的最后一层,利用迁移学习来预测车辆的转向角度。在两个不同轨道采集的数据集上进行了实验。根据研究结果,ResNet18和DenseNet121的转向角值错误率最低。并在预定轨道上对改进模型的性能进行了评价。ResNet18在准确性方面优于DenseNet121,与轨道中心的偏差较小,而DenseNet121在多轨道上表现出更强的适应性,从而获得更好的性能一致性。
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