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Automatic segmentation and classification of pipeline images using mathematic morphology and fuzzy k-means algorithm

机译:基于数学形态学和模糊k均值算法的管道图像自动分割和分类

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Defects on the Pipeline surface such as cracks cause main problems for governments, specifically when the pipeline is covered under the ground. Manual examination for surface defects in the pipeline has several disadvantages, including varying standards, and high cost. In this paper, a combination of two algorithms based on mathematical morphology and curvature evaluation for segmentation of defects is proposed. Then, we use fuzzy k-means clustering to classify pipe defects. The proposed method can be completely automated and has been tested on more than 250 scanned images of petroleum pipelines of Iran.
机译:管道表面的缺陷(例如裂缝)是政府的主要问题,特别是当管道被地下掩盖时。手动检查管道中的表面缺陷有几个缺点,包括标准不一,成本高。本文提出了一种基于数学形态学和曲率评估的两种算法相结合的缺陷分割算法。然后,我们使用模糊k均值聚类对管道缺陷进行分类。所提出的方法可以完全自动化,并且已经在伊朗的250多个石油管道扫描图像上进行了测试。

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