基于智能视觉的混凝土微结构质量检测方法研究
Research on Concrete Micro Structure Analysis Based on Intelligent Vision
DOI: 10.12677/CSA.2013.35046, PDF, HTML, 下载: 2,978  浏览: 10,549 
作者: 郑圣子*, 李相旭*:天津科技大学机械工程学院
关键词: 智能视觉混凝土模糊分类Intelligent Vision; Concrete; Fuzzy Classification
摘要: 混凝土质量对建筑物,桥梁,公路等设施的安全性,可靠性影响很大。目前的质量检测主要是人工的方法,通过显微镜观察混凝土切面的成分组成和分布,费时费力,检测质量很难保证。本文提出一种新颖的基于模糊规则混凝土质量智能视觉识别技术,通过支持向量机自动学习模糊规则,模仿人类的智能视觉识别过程,提高质量检测的自动化,可靠性和效率。实验证明,该方法相对于传统的方法来说,是有效的。
Abstract: The quality of concrete plays an important role in assessing the safety and reliability issues of buildings, bridges and roads. At present, quality tests mainly depend on manual labor, through a micro telescope vision to check crossover of concrete sample. It is time-consuming and the test results have low reliability. This paper proposes a new intelligent vision based on analyzing method by implementing fuzzy logic. Base on support vector learning, the fuzzy rules are constructed automatically simulating a human learning and classifying process. This approach improves the productivity, reliability, and degree of automation. Compared with traditional method, this way proves its effectiveness through experimental verification.
文章引用:郑圣子, 李相旭. 基于智能视觉的混凝土微结构质量检测方法研究[J]. 计算机科学与应用, 2013, 3(5): 267-271. http://dx.doi.org/10.12677/CSA.2013.35046

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