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Convolutional Autoencoder-Based Flaw Detection for Steel Wire Ropes

机译:基于钢丝绳的基于卷积的自动化器的探伤检测

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摘要

Visual perception-based methods are a promising means of capturing the surface damage state of wire ropes and hence provide a potential way to monitor the condition of wire ropes. Previous methods mainly concentrated on the handcrafted feature-based flaw representation, and a classifier was constructed to realize fault recognition. However, appearances of outdoor wire ropes are seriously affected by noises like lubricating oil, dust, and light. In addition, in real applications, it is difficult to prepare a sufficient amount of flaw data to train a fault classifier. In the context of these issues, this study proposes a new flaw detection method based on the convolutional denoising autoencoder (CDAE) and Isolation Forest (iForest). CDAE is first trained by using an image reconstruction loss. Then, it is finetuned to minimize a cost function that penalizes the iForest-based flaw score difference between normal data and flaw data. Real hauling rope images of mine cableways were used to test the effectiveness and advantages of the newly developed method. Comparisons of various methods showed the CDAE-iForest method performed better in discriminative feature learning and flaw isolation with a small amount of flaw training data.
机译:基于视觉感知的方法是捕获线绳的表面损伤状态的有希望的方法,因此提供了监测线绳的状况的潜在方法。以前的方法主要集中在手工制作的基于功能的缺陷表示,并且构造了一个分类器以实现故障识别。然而,户外钢丝绳的外观受到润滑油,灰尘和光的噪声的严重影响。另外,在实际应用中,难以准备足够量的漏洞数据来训练故障分类器。在这些问题的背景下,本研究提出了一种基于卷积去噪的自动化(CDAE)和隔离林(IFOREST)的新探伤检测方法。首先通过使用图像重建损失训练CDAE。然后,FineTuned以最小化惩罚正常数据和漏洞数据之间基于IFORest的缺陷差异的成本函数。矿山缆绳的真正牵引绳索用于测试新开发方法的有效性和优势。各种方法的比较显示CDAE-IFOST方法在鉴别特征学习和漏洞隔离中表现更好,具有少量缺陷训练数据。

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