Automatic Identification of Corrosion in Marine Vessels Using Decision-Tree Imaging Hierarchies

G. Chliveros, S. Kontomaris, Apostolos Letsios
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Abstract

We propose an unsupervised method for eigen tree hierarchies and quantisation group association for segmentation of corrosion in marine vessel hull inspection via camera images. Our unsupervised approach produces image segments that are examined to decide on defect recognition. The method generates a binary decision tree, which, by means of bottom-up pruning, is revised, and dominant leaf nodes predict the areas of interest. Our method is compared with other techniques, and the results indicate that it achieves better performance for true- vs. false-positive area against ideal (ground truth) coverage.
基于决策树成像层次的船舶腐蚀自动识别
提出了一种基于特征树层次和量化组关联的无监督方法,用于摄像机图像船体腐蚀检测的分割。我们的无监督方法产生图像片段,通过检查来决定缺陷识别。该方法生成一棵二叉决策树,通过自底向上的剪枝对其进行修正,并利用优势叶节点预测感兴趣的区域。我们的方法与其他技术进行了比较,结果表明,在理想(地面真值)覆盖下,它在真阳性与假阳性区域取得了更好的性能。
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