Reliability of GAN Generated Data to Train and Validate Perception Systems for Autonomous Vehicles

Weihuang Xu, Nasim Souly, P. Brahma
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引用次数: 6

Abstract

Autonomous systems deployed in the real world have to deal with potential problem causing situations that they have never seen during their training phases. Due to the long-tail nature of events, collecting a large amount of data for such corner cases is a difficult task. While simulation is one plausible solution, recent developments in the field of Generative Adversarial Networks (GANs) make them a promising tool to generate and augment realistic data without exhibiting a domain shift from actual real data. In this manuscript, we empirically analyze and propose novel solutions for the trust that we can place on GAN generated data for training and validation of vision-based perception modules like object detection and scenario classification.
GAN生成数据在自动驾驶汽车感知系统训练和验证中的可靠性
在现实世界中部署的自主系统必须处理在训练阶段从未见过的潜在问题。由于事件的长尾特性,为此类极端情况收集大量数据是一项艰巨的任务。虽然模拟是一种可行的解决方案,但生成对抗网络(gan)领域的最新发展使它们成为一种有前途的工具,可以生成和增强现实数据,而不会显示出与实际真实数据的域转移。在本文中,我们对GAN生成的数据的信任进行了实证分析并提出了新的解决方案,用于训练和验证基于视觉的感知模块,如对象检测和场景分类。
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