Algorithm for Automatic Crack Analysis and Severity Identification

Sara Ashraf, I. Hegazy, T. Elarif
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引用次数: 2

Abstract

Concrete structures are increasing every day, to facilitate people's lives. With this expansion, the traditional manual maintenance method becomes unpractical, costly and time-wasting. The fast detection and maintenance of concrete surfaces defects is necessary to save people's lives, reducing maintenance cost, and increase the lifetime of concrete structures. Thus, the researches came up over the last twenty years to find an automatic way in order to maintain, apply regularly check-ups over concrete structures and assist engineers to take fast decisions. The most researches came up with high precision algorithms to allocate cracks and defects over the concrete surfaces with no human intervention. Nowadays, the computer programs can be dependable to capture large data sets of concrete structure, and then give precise locations of cracks. However, there exists a lack of researches that work on crack interpretation and automatic decision-making, which is considered as a critical part of those systems. Therefore, there exists a need for methods that describe the crack characteristics in terms of width, length, and other morphological attributes. In this paper, a crack interpretation algorithm is proposed to extract crack geometrical attributes and support the decision maker.
裂纹自动分析与严重性识别算法
混凝土结构日益增多,方便了人们的生活。随着这种规模的扩大,传统的人工维护方法变得不实用、昂贵和浪费时间。混凝土表面缺陷的快速检测和维修对于挽救人们的生命,降低维修成本,增加混凝土结构的使用寿命是必要的。因此,在过去的二十年里,研究人员开始寻找一种自动化的方法来维护,对混凝土结构进行定期检查,并帮助工程师快速做出决策。大多数研究都提出了高精度的算法来分配混凝土表面的裂缝和缺陷,而无需人工干预。目前,计算机程序可以可靠地捕获混凝土结构的大量数据集,然后给出精确的裂缝位置。然而,对于裂缝解释和自动决策的研究却很少,而裂缝解释和自动决策被认为是这些系统的关键部分。因此,需要用宽度、长度和其他形态属性来描述裂缝特征的方法。本文提出了一种裂缝解释算法,提取裂缝几何属性,为决策者提供支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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