With the rapid growth of display devices, quality inspection via machine vision technology has become increasingly important for flat-panel displays (FPD) industry. This paper discloses a novel visual inspection system for liquid crystal display (LCD), which is currently a dominant type in the FPD industry. The system is based on two cornerstones: robust/high-performance defect recognition model and cognitive visual inspection service architecture. A hybrid application of conventional computer vision technique and the latest deep convolutional neural network (DCNN) leads to an integrated defect detection, classfication and impact evaluation model that can be economically trained with only image-level class annotations to achieve a high inspection accuracy. In addition, the properly trained model is robust to the variation of the image qulity, significantly alleviating the dependency between the model prediction performance and the image aquisition environment. This in turn justifies the decoupling of the defect recognition functions from the front-end device to the back-end serivce, motivating the design and realization of the cognitive visual inspection service architecture. Empirical case study is performed on a large-scale real-world LCD dataset from a manufacturing line with different layers and products, which shows the promising utility of our system, which has been deployed in a real-world LCD manufacturing line from a major player in the world.
翻译:随着显示装置的迅速增长,通过机器视觉技术进行质量检查对平板显示(FPD)行业变得日益重要。本文披露了液晶显示(LCD)的新型视觉检查系统,这是目前FPD行业的主导类型。该系统基于两个基石:强/高性能缺陷识别模型和认知视觉检查服务结构。常规计算机视觉技术的混合应用和最新的深层神经神经网络(DCNNN)导致综合缺陷检测、分级和影响评价模型,这种模型可以经过经济培训,只有图像级说明才能达到高检查精确度。此外,经过适当培训的模型对于图像光度的变化非常强大,大大减轻模型预测性能与图像裁量环境之间的依赖性。这反过来又证明将缺陷识别功能与前端装置和后端神经系统脱钩,激励设计和实现认知视觉检查服务结构。Empicalcal案例研究是在大型真实世界真实世界级LCD数据系统进行大规模LCD数据化研究,从不同层次和主要产品中展示了我们制造世界中具有前景的一线的制造业。