Deep Learning for Hardware-Constrained Driverless Cars

B. K. Sreedhar, Nagarajan Shunmugam
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Abstract

The field of self-driving cars is a fast-growing one, and numerous companies and organizations are working at the forefront of this technology. One of the major requirements for self-driving cars is the necessity of expensive hardware to run complex models. This project aims to identify a suitable deep learning model under hardware constraints. We obtain the results of a supervised model trained with data from a human driver and compare it to a reinforcement learning-based approach. Both models will be trained and tested on devices with low-end hardware, and their results visualized with the help of a driving simulator. The objective is to demonstrate that even a simple model with enough data augmentation can perform specific tasks and does not require much investment in time and money. We also aim to introduce portability to deep learning models by trying to deploy the model in a mobile device and show that it can work as a standalone module.
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硬件受限的无人驾驶汽车的深度学习
自动驾驶汽车是一个快速发展的领域,许多公司和组织都在这项技术的前沿工作。自动驾驶汽车的主要要求之一是需要昂贵的硬件来运行复杂的模型。本项目旨在确定在硬件约束下合适的深度学习模型。我们获得了用人类驾驶员数据训练的监督模型的结果,并将其与基于强化学习的方法进行了比较。这两款车型都将在低端硬件设备上进行训练和测试,并在驾驶模拟器的帮助下将测试结果可视化。我们的目标是证明,即使是具有足够数据增强的简单模型也可以执行特定的任务,并且不需要太多的时间和金钱投资。我们还旨在通过尝试在移动设备中部署模型来引入深度学习模型的可移植性,并表明它可以作为独立模块工作。
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