利用深度神经网络进行自动驾驶汽车行为训练

Jiayi Gao
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引用次数: 0

摘要

如今,自动驾驶变得越来越普遍。借助 Kaggle 自动驾驶数据集中的大量汽车运动图像,我们探索了利用所获图像训练深度神经网络以检测和预测汽车行为关键部分--转向角的可行性。由于深度神经网络已成为训练自动驾驶汽车、了解和改进其驾驶行为的强大工具,我们在深度神经网络架构中加入了卷积层和附加层,使其能够适当捕捉行为并提供有效结果。我们证明了这种方法的实施是成功的,相应的实施凸显了深度神经网络在推进自动驾驶汽车技术方面的潜力。我们的综合评估表明,进一步的研究应集中于完善网络架构和增强感知能力,以便为该领域带来可喜的进步。
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Autonomous Car Behavioral Training Using Deep Neural Network
Autonomous driving is becoming increasingly prevalent nowadays. With the help of a number of images of car movement from the Kaggle self-driving dataset, we explore the feasibility of utilizing the images obtained to train a deep neural network to detect and predict the steering angle, which is the critical part of the car behavior. Since deep neural networks have emerged as powerful tools for training autonomous cars and learning about and improving their driving behaviors, we incorporate convolutional layers and additional layers in the deep neural network architecture so that it can capture the behaviors appropriately and provide effective results. We demonstrate that the implementation of this approach is successful and that the corresponding implementation highlights the potential of deep neural network in advancing autonomous car technology. Our comprehensive evaluation suggests that further research should concentrate on refining the network architecture and enhancing perception capabilities in order to deliver promising advances to the field.
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