电路级非理想性对基于视觉的自动驾驶系统的影响

Handi Yu, Changhao Yan, Xuan Zeng, Xin Li
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引用次数: 3

摘要

我们描述了一种新的方法来验证基于视觉的自动驾驶系统在不同的电路弯道,考虑温度变化和电路老化。所提议的工作的动机是底层电路实现可能对系统性能产生重大影响,即使这种影响今天还没有得到适当的考虑。我们的方法将标称条件下记录的图像数据与综合统计电路模型无缝集成,以综合生成自动驾驶系统可能失效的关键边缘情况。因此,给定的汽车系统可以针对这些不容易通过物理实验捕获的最坏情况进行可靠的验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of circuit-level non-idealities on vision-based autonomous driving systems
We describe a novel methodology to validate vision-based autonomous driving systems over different circuit corners with consideration of temperature variation and circuit aging. The proposed work is motivated by the fact that low-level circuit implementation may have a significant impact on system performance, even though such effects have not been appropriately taken into account today. Our approach seamlessly integrates the image data recorded under nominal conditions with comprehensive statistical circuit models to synthetically generate the critical corner cases for which an autonomous driving system is likely to fail. As such, a given automotive system can be robustly validated for these worst-case scenarios that cannot be easily captured by physical experiments.
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