论文标题
智能注意:工业自动化的智能手机玻璃缺陷的微观刻度本地化和分类
Smart-Inspect: Micro Scale Localization and Classification of Smartphone Glass Defects for Industrial Automation
论文作者
论文摘要
智能设备玻璃屏幕上的任何类型的缺陷都对其质量产生了很大的影响。我们提出了一个强大的半监督学习框架,用于智能微型定位和智能手机玻璃16K像素图像上的缺陷分类。我们的模型具有三种缺陷的有效识别和标记:划痕,由于裂缝而引起的光泄漏和坑。我们的方法还区分了由于尘埃颗粒和传感器区域引起的缺陷和光反射,这些区域被归类为非缺陷区域。与主组件分析(PCA),多分辨率和基于信息融合的算法相比,我们使用部分标记的数据集来实现缺陷和非缺陷领域的高鲁棒性和出色的分类。此外,我们在检查框架的不同阶段合并了两个分类器,以标记和完善未标记的缺陷。我们成功地增强了最高5微米的检查深度限制。实验结果表明,我们的方法通过鉴定出通过人类检查标记为好的样品的缺陷来测试玻璃屏样品的质量时的手动检查。
The presence of any type of defect on the glass screen of smart devices has a great impact on their quality. We present a robust semi-supervised learning framework for intelligent micro-scaled localization and classification of defects on a 16K pixel image of smartphone glass. Our model features the efficient recognition and labeling of three types of defects: scratches, light leakage due to cracks, and pits. Our method also differentiates between the defects and light reflections due to dust particles and sensor regions, which are classified as non-defect areas. We use a partially labeled dataset to achieve high robustness and excellent classification of defect and non-defect areas as compared to principal components analysis (PCA), multi-resolution and information-fusion-based algorithms. In addition, we incorporated two classifiers at different stages of our inspection framework for labeling and refining the unlabeled defects. We successfully enhanced the inspection depth-limit up to 5 microns. The experimental results show that our method outperforms manual inspection in testing the quality of glass screen samples by identifying defects on samples that have been marked as good by human inspection.