Image compression of surface defects of the hot-rolled steel strip using Principal Component Analysis

IF 1.3 Q4 MATERIALS SCIENCE, MULTIDISCIPLINARY Materiaux & Techniques Pub Date : 2019-02-01 DOI:10.1051/MATTECH/2019012
A. boudiaf, K. Boubendira, K. Harrar, A. Saadoune, H. Ghodbane, Amine Dahane, Oussama Messai
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引用次数: 3

Abstract

The quality control of steel products by human vision remains tedious, fatiguing, somewhat fast, rather robust, sketchy, dangerous or impossible. For these reasons, the use of the artificial vision in the world of quality control has become more than necessary. However, these images are often large in terms of quantity and size, which becomes a problem in quality control centers, where engineers are unable to store these images. For this, efficient compression techniques are necessary for archiving and transmitting the images. The reduction in file size allows more images to be stored in a disk or memory space. The present paper proposes an effective technique for redundancy extraction using the Principal Component Analysis (PCA) approach. Furthermore, it aims to study the effects of the number of eigenvectors employed in the PCA compression technique on the quality of the compressed image. The results revealed that using only 25% of the eigenvectors provide very similar compressed images compared to the original ones, in terms of quality. These images are characterized by high compression ratios and a small storage space.
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基于主成分分析的热轧带钢表面缺陷图像压缩
人类视觉对钢铁产品的质量控制仍然是乏味的、令人疲惫的、有点快的、相当稳健的、粗略的、危险的或不可能的。由于这些原因,人工视觉在质量控制领域的应用变得非常必要。然而,这些图像在数量和大小方面往往很大,这在质量控制中心成为了一个问题,因为工程师无法存储这些图像。为此,高效的压缩技术对于存档和传输图像是必要的。文件大小的减小允许在磁盘或内存空间中存储更多的图像。本文提出了一种利用主成分分析(PCA)方法进行冗余提取的有效技术。此外,它旨在研究PCA压缩技术中使用的特征向量数量对压缩图像质量的影响。结果表明,在质量方面,与原始图像相比,仅使用25%的特征向量可以提供非常相似的压缩图像。这些图像的特征在于高压缩比和小存储空间。
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来源期刊
Materiaux & Techniques
Materiaux & Techniques MATERIALS SCIENCE, MULTIDISCIPLINARY-
CiteScore
1.50
自引率
11.10%
发文量
20
期刊介绍: Matériaux & Techniques informs you, through high-quality and peer-reviewed research papers on research and progress in the domain of materials: physical-chemical characterization, implementation, resistance of materials in their environment (properties of use, modelling)... The journal concerns all materials, metals and alloys, nanotechnology, plastics, elastomers, composite materials, glass or ceramics. This journal for materials scientists, chemists, physicists, ceramicists, engineers, metallurgists and students provides 6 issues per year plus a special issue. Each issue, in addition to scientific articles on specialized topics, also contains selected technical news (conference announcements, new products etc.).
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