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Resiliency of automotive object detection networks on GPU architectures

机译:GPU架构上汽车对象检测网络的弹性

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Safety is the most important aspect of an autonomous driving platform. Deep neural networks (DNNs) play an increasingly critical role in localization, perception, and control in these systems. The object detection and classification inference are of particular importance to construct a precise picture of a vehicle's surrounding objects. Graphics Processing Units (GPU) are well-suited to accelerate such DNN-based inference applications since they leverage data and thread-level parallelism in GPU architectures. Understanding the vulnerability of such DNNs to random hardware faults (including transient and permanent faults) in GPU-based systems is essential to meet the safety requirements of auto safety standards such as the ISO 26262, as well as to influence the design of hardware and software-based safety features in current and future generations of GPU architectures and GPU-based automotive platforms. In this paper, we assess the vulnerability of object detection and classification DNNs to permanent and transient faults using fault injection experiments and accelerated neutron beam testing respectively. We also evaluate the effectiveness of chip-level safety mechanisms in GPU architectures, such as ECC and parity, in detecting these random hardware faults. Our studies demonstrate that such object detection networks tend to be vulnerable to random hardware faults, which cause incorrect or mispredicted object detection outcomes. The neutron beam experiments show that existing chip-level protections successfully mitigate all silent data corruption events caused by transient faults. For permanent faults, while ECC and parity are effective in some cases, our results suggest the need for exploring other complementary detection methods, such as periodic online and offline diagnostic testing.
机译:安全是自主驾驶平台最重要的方面。深度神经网络(DNN)在这些系统中的本地化,感知和控制中起着越来越关键的作用。对象检测和分类推断特别重要地构建车辆周围物体的精确图像。图形处理单元(GPU)非常适合,以加速基于DNN的推理应用程序,因为它们在GPU架构中利用数据和线程平行度。了解基于GPU的系统中这种DNN的漏洞到基于GPU的系统中的随机硬件故障(包括瞬态和永久性故障)对于满足ISO 26262等自动安全标准的安全要求至关重要,以及影响硬件和软件的设计基于GPU架构和GPU的汽车平台的当前和后代的安全功能。在本文中,我们将物体检测和分类DNN的脆弱性分别使用故障注射实验和加速中子束测试分别评估对象检测和分类DNN到永久性和瞬态故障。我们还评估了在检测这些随机硬件故障的GPU架构中的芯片级安全机制的有效性,例如ECC和奇偶校验。我们的研究表明,此类对象检测网络往往容易受到随机硬件故障的影响,这导致对象检测结果不正确或错误。中子束实验表明,现有的芯片级保护成功减轻了由瞬态故障引起的所有静默数据损坏事件。对于永久性故障,虽然ECC和Parisir在某些情况下有效,但我们的结果表明需要探索其他互补检测方法,例如定期在线和离线诊断测试。

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