基于人工智能系统的训练和验证虚拟测试场景的生成

Ulrich Dahmen, T. Osterloh, J. Roßmann
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引用次数: 3

摘要

人工智能(AI)领域的技术越来越多地应用于各种行业。然而,除了它们相当大的潜力之外,重要的是要注意,基于ai的系统的行为无法根据其内部架构进行预测,因此无法保证其正确的行为。相反,性能和可靠性取决于训练数据的数量和质量。人工智能要求的任务越复杂,在实践中通过真实的测量系列收集必要的训练和验证数据的可能性就越小。一个流行的例子是自动驾驶所需的态势感知,这需要不断增加的行驶里程。因此,人们现在逐渐转向包含通过模拟生成的合成训练数据。这就是这篇论文的由来。我们提出了一种基于系统使用数字双胞胎和虚拟测试平台的虚拟测试场景的灵活生成的概念,允许以适当的数量、质量和时间为基于人工智能的系统生成训练和验证数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generation of Virtual Test Scenarios for Training and Validation of AI-based Systems
Technologies in the field of artificial intelligence (AI) are increasingly used in a wide variety of industries. However, in addition to their considerable potential, it is important to note that the behavior of an AI-based system cannot be predicted based on its internal architecture, and thus its correct behavior cannot be guaranteed. Instead, both the performance and the reliability depend on the amount and quality of training data. The greater the complexity of a task required from the AI, the less likely it is that the necessary training and validation data can be collected through real measurement series in practice. A popular example is the situation awareness required for autonomous driving, which requires an ever-increasing amount of kilometers to be driven. Therefore, people are now gradually shifting to the inclusion of synthetic training data generated by simulation. This is where this paper comes in. We present a concept for a flexible generation of virtual test scenarios based on a systematic use of digital twins and virtual testbeds, allowing to generate training and validation data for AI-based systems in appropriate quantity, quality, and time.
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