自动驾驶系统高效计算平台设计

Shuang Liang, Changcheng Tang, Xuefei Ning, Shulin Zeng, Jincheng Yu, Yu Wang, Kaiyuan Guo, Diange Yang, Tianyi Lu, Huazhong Yang
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引用次数: 1

摘要

自动驾驶正在成为学术界和工业界的热门话题。传统的算法很难完成复杂的任务和满足高安全标准。最近的研究表明,深度学习的性能比传统算法有了显著的提高,被认为是自动驾驶系统的有力候选者。尽管有很好的表现,深度学习并不能完全解决问题。应用场景要求自动驾驶系统必须实时工作以保证安全。但是神经网络模型的高计算复杂度以及复杂的前后处理给神经网络模型带来了很大的挑战。系统设计者需要进行专门的优化,为自动驾驶打造一个实用的计算平台。本文介绍了我们在自动驾驶系统高效计算平台设计方面所做的工作。在软件层面,我们引入了神经网络压缩和硬件感知架构搜索来减少工作量。在硬件层面,我们提出了定制的硬件加速器,用于深度学习算法的预处理和后处理。最后介绍了硬件平台NOVA-30的设计,以及我们的车载评估项目。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Computing Platform Design for Autonomous Driving Systems
Autonomous driving is becoming a hot topic in both academic and industrial communities. Traditional algorithms can hardly achieve the complex tasks and meet the high safety criteria. Recent research on deep learning shows significant performance improvement over traditional algorithms and is believed to be a strong candidate in autonomous driving system. Despite the attractive performance, deep learning does not solve the problem totally. The application scenario requires that an autonomous driving system must work in real-time to keep safety. But the high computation complexity of neural network model, together with complicated pre-process and post-process, brings great challenges. System designers need to do dedicated optimizations to make a practical computing platform for autonomous driving. In this paper, we introduce our work on efficient computing platform design for autonomous driving systems. In the software level, we introduce neural network compression and hardware-aware architecture search to reduce the workload. In the hardware level, we propose customized hardware accelerators for pre- and post-process of deep learning algorithms. Finally, we introduce the hardware platform design, NOVA-30, and our on-vehicle evaluation project.
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