Computer-generated imagery of car models has become an indispensable part of car manufacturers' advertisement concepts. They are for instance used in car configurators to offer customers the possibility to configure their car online according to their personal preferences. However, human-led quality assurance faces the challenge to keep up with high-volume visual inspections due to the car models' increasing complexity. Even though the application of machine learning to many visual inspection tasks has demonstrated great success, its need for large labeled data sets remains a central barrier to using such systems in practice. In this paper, we propose an active machine learning-based quality assurance system that requires significantly fewer labeled instances to identify defective virtual car renderings without compromising performance. By employing our system at a German automotive manufacturer, start-up difficulties can be overcome, the inspection process efficiency can be increased, and thus economic advantages can be realized.
翻译:汽车模型计算机生成的汽车模型图像已成为汽车制造商广告概念不可或缺的一部分,例如,汽车配置软件用于向客户提供根据个人喜好在网上配置汽车的可能性;然而,由于汽车模型日益复杂,以人为主导的质量保证面临着跟上高容量视觉检查的挑战。尽管对许多视觉检查任务应用机器学习证明取得了巨大成功,但其对大型标签数据集的需求仍然是在实践中使用这类系统的一个核心障碍。在本文中,我们提出一个积极的机器学习质量保证系统,需要少得多的贴标签案例来识别有缺陷的虚拟汽车产品,同时又不损害性能。通过在德国汽车制造商使用我们的系统,启动困难是可以克服的,检查过程的效率可以提高,从而实现经济效益。