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A Hybrid Data-Driven Method for Wire Rope Surface Defect Detection

机译:一种用于钢丝绳表面缺陷检测的混合数据驱动方法

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摘要

Visual inspection method (VIM) has attracted more and more attention because it is fast, nondestructive, automatic, and objective, which can replace manual inspection method or assist other non-destructive testing methods for wire ropes (WR) to a certain extent. However, it is still a challenging task to accurately detect the potential defects and identify the types from the WR surface morphology. In this paper, an efficient hybrid data-driven method based on texture features and optimized support vector machine (SVM) is proposed to solve this problem, which is called WR-IFOA-SVM. Uniform local binary pattern and gray-level co-occurrence matrix features were extracted and fused from image dataset which contains three most common states, i.e. healthy, broken and worn WRs. The inertial dynamic weight function was introduced into the fruit fly optimization algorithm (FOA) to overcome the problem that the traditional FOA cannot balance the global and local search ability. And the data mining experiments of the established feature dataset were carried out relying on the proposed WR-IFOA-SVM model, which was then compared with other methods. The experimental results show that this method can effectively detect various defect types on the WR surface, furthermore demonstrate that our method outperforms the state-of-the-art works in WR visual inspection field.
机译:目视检测方法(VIM)吸引了越来越多的关注,因为它是快速,无损,自动和目标的,可以取代手动检查方法或辅助其他非破坏性测试方法在一定程度上进行钢丝绳(WR)。然而,仍然是一种具有挑战性的任务,可以准确地检测潜在的缺陷并识别来自WR表面形态的类型。在本文中,提出了一种基于纹理特征和优化支持向量机(SVM)的有效的混合数据驱动方法来解决这个问题,称为WR-IFOA-SVM。提取统一的局部二进制模式和灰度级共发生矩阵特征,并从包含三个最常见的州的图像数据集融合,即健康,破碎和磨损的WRS。惯性动态重量函数被引入果蝇优化算法(FOA),以克服传统FOA不能平衡全局和本地搜索能力的问题。并且依赖于所提出的WR-IFOA-SVM模型进行既定特征数据集的数据挖掘实验,然后与其他方法进行比较。实验结果表明,该方法可以有效地检测WR表面上的各种缺陷类型,还证明了我们的方法优于WR目视检查领域的最先进的工作。

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