Research Center of Intelligent System and Robotics, Chongqing University of Posts and Telecommunications, Chongqing 400065, China.
Sensors (Basel). 2020 Feb 12;20(4):980. doi: 10.3390/s20040980.
To create an intelligent surface region of interests (ROI) 3D quantitative inspection strategy a reality in the continuous casting (CC) production line, an improved 3D laser image scanning system (3D-LDS) was established based on binocular imaging and deep-learning techniques. In 3D-LDS, firstly, to meet the requirements of the industrial application, the CCD laser image scanning method was optimized in high-temperature experiments and secondly, we proposed a novel region proposal method based on 3D ROI initial depth location for effectively suppressing redundant candidate bounding boxes generated by pseudo-defects in a real-time inspection process. Thirdly, a novel two-step defects inspection strategy was presented by devising a fusion deep CNN model which combined fully connected networks (for defects classification/recognition) and fully convolutional networks (for defects delineation). The 3D-LDS' dichotomous inspection method of defects classification and delineation processes are helpful in understanding and addressing challenges for defects inspection in CC product surfaces. The applicability of the presented methods is mainly tied to the surface quality inspection for slab, strip and billet products.
为了实现在连铸(CC)生产线上对智能表面感兴趣区域(ROI)的 3D 定量检测策略,我们基于双目成像和深度学习技术,建立了一种改进的 3D 激光图像扫描系统(3D-LDS)。在 3D-LDS 中,首先,为了满足工业应用的要求,我们对 CCD 激光图像扫描方法进行了高温实验优化,其次,我们提出了一种新颖的基于 3D ROI 初始深度位置的区域建议方法,用于有效地抑制实时检测过程中伪缺陷生成的冗余候选边界框。第三,通过设计一个融合全连接网络(用于缺陷分类/识别)和全卷积网络(用于缺陷描绘)的融合深度 CNN 模型,提出了一种新颖的两步缺陷检测策略。3D-LDS 的缺陷分类和描绘过程的二分法检测方法有助于理解和解决 CC 产品表面缺陷检测的挑战。所提出方法的适用性主要取决于板坯、带材和坯料产品的表面质量检测。