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An infrared thermal image processing framework based on superpixel algorithm to detect cracks on metal surface

机译:基于超像素算法的红外热像处理框架检测金属表面裂纹

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摘要

Infrared thermography has been used increasingly as an effective non-destructive technique to detect cracks on metal surface. Due to many factors, infrared thermal image has low definition compared to visible image. The contrasts between cracks and sound areas in different thermal image frames of a specimen vary greatly with the recorded time. An accurate detection can only be obtained by glancing over the whole thermal video, which is a laborious work. Moreover, experience of the operator has a great important influence on the accuracy of detection result. In this paper, an infrared thermal image processing framework based on superpixel algorithm is proposed to accomplish crack detection automatically. Two popular superpixel algorithms are compared and one of them is selected to generate superpixels in this application. Combined features of superpixels were selected from both the raw gray level image and the high-pass filtered image. Fuzzy c-means clustering is used to cluster superpixels in order to segment infrared thermal image. Experimental results show that the proposed framework can recognize cracks on metal surface through infrared thermal image automatically.
机译:红外热成像技术已被越来越多地用作检测金属表面裂缝的有效无损技术。由于许多因素,与可见图像相比,红外热图像的清晰度较低。样品的不同热像框中的裂纹和声音区域之间的对比度随记录时间的不同而有很大差异。只有浏览整个热视频才能获得准确的检测,这是一项艰巨的工作。而且,操作者的经验对检测结果的准确性有很大的重要影响。本文提出了一种基于超像素算法的红外热图像处理框架,可以自动完成裂纹检测。比较了两种流行的超像素算法,并选择了其中一种以生成超像素。从原始灰度图像和高通滤波图像中都选择了超像素的组合特征。模糊c均值聚类用于聚类超像素,以分割红外热图像。实验结果表明,该框架能够通过红外热像自动识别金属表面的裂纹。

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