This paper introduces a new type of system for fabric defect detection with the tactile inspection system. Different from existed visual inspection systems, the proposed system implements a vision-based tactile sensor. The tactile sensor, which mainly consists of a camera, four LEDs, and an elastic sensing layer, captures detailed information about fabric surface structure and ignores the color and pattern. Thus, the ambiguity between a defect and image background related to fabric color and pattern is avoided. To utilize the tactile sensor for fabric inspection, we employ intensity adjustment for image preprocessing, Residual Network with ensemble learning for detecting defects, and uniformity measurement for selecting ideal dataset for model training. An experiment is conducted to verify the performance of the proposed tactile system. The experimental results have demonstrated the feasibility of the proposed system, which performs well in detecting structural defects for various types of fabrics. In addition, the system does not require external light sources, which skips the process of setting up and tuning a lighting environment.
翻译:本文介绍了一种与触觉检查系统对织物缺陷进行检测的新型系统。与现有的视觉检查系统不同,拟议的系统采用了一种基于视觉的触觉传感器。触觉传感器主要由相机、四个LED和一个弹性感应层组成,它捕捉了有关织物表面结构的详细信息,忽略了颜色和图案。因此,避免了与织物颜色和图案有关的缺陷和图象背景之间的模糊性。为利用触觉传感器进行织物检查,我们采用了对图像预处理的强度调整,对图像预处理进行了强度调整,对发现缺陷进行了共同学习的残余网络,为模型培训选择理想的数据集进行了统一测量。进行了一项实验,以核实拟议触摸系统的业绩。实验结果证明了拟议的系统的可行性,该系统在发现各种类型的织物的结构缺陷方面表现良好。此外,该系统不需要外部光源,而后者跳过设置和调整照明环境的过程。