Department of Cyber Security, College of Engineering & Information Technology, Onaizah Colleges, Onaizah P.O. Box 5371, Saudi Arabia.
Department of Cybersecurity and Software, Central Ukrainian National Technical University, P.O. Box 25006 Kropyvnytskyi, Ukraine.
Sensors (Basel). 2022 Aug 19;22(16):6223. doi: 10.3390/s22166223.
Computer vision and image processing techniques have been extensively used in various fields and a wide range of applications, as well as recently in surface treatment to determine the quality of metal processing. Accordingly, digital image evaluation and processing are carried out to perform image segmentation, identification, and classification to ensure the quality of metal surfaces. In this work, a novel method is developed to effectively determine the quality of metal surface processing using computer vision techniques in real time, according to the average size of irregularities and caverns of captured metal surface images. The presented literature review focuses on classifying images into treated and untreated areas. The high computation burden to process a given image frame makes it unsuitable for real-time system applications. In addition, the considered current methods do not provide a quantitative assessment of the properties of the treated surfaces. The markup, processed, and untreated surfaces are explored based on the entropy criterion of information showing the randomness disorder of an already treated surface. However, the absence of an explicit indication of the magnitude of the irregularities carries a dependence on the lighting conditions, not allowing to explicitly specify such characteristics in the system. Moreover, due to the requirement of the mandatory use of specific area data, regarding the size of the cavities, the work is challenging in evaluating the average frequency of these cavities. Therefore, an algorithm is developed for finding the period of determining the quality of metal surface treatment, taking into account the porous matrix, and the complexities of calculating the surface tensor. Experimentally, the results of this work make it possible to effectively evaluate the quality of the treated surface, according to the criterion of the size of the resulting irregularities, with a frame processing time of 20 ms, closely meeting the real-time requirements.
计算机视觉和图像处理技术已经在各个领域和广泛的应用中得到了广泛的应用,最近也在表面处理中用于确定金属加工的质量。因此,进行数字图像评估和处理以执行图像分割、识别和分类,以确保金属表面的质量。在这项工作中,根据捕获的金属表面图像的不规则性和凹坑的平均大小,开发了一种使用计算机视觉技术实时有效确定金属表面处理质量的新方法。本文综述的重点是将图像分类为处理过的和未处理的区域。处理给定图像帧的高计算负担使其不适合实时系统应用。此外,考虑到的当前方法不能对处理表面的特性进行定量评估。根据信息熵准则,对标记、处理和未处理的表面进行了探索,该准则显示了已处理表面的随机性和无序性。然而,不规则性的大小没有明确的指示,这取决于照明条件,不允许在系统中明确指定这些特性。此外,由于必须使用特定区域数据的要求,关于腔的大小,这项工作在评估这些腔的平均频率方面具有挑战性。因此,开发了一种用于确定金属表面处理质量的周期的算法,考虑到多孔基质以及计算表面张量的复杂性。实验结果表明,根据所得不规则性的大小标准,该工作能够有效地评估处理表面的质量,帧处理时间为 20 毫秒,非常符合实时要求。