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Tunnel Lining Crack Detection Method by Means of Deep Learning

机译:深度学习的隧道衬砌裂缝检测方法

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Existing image processing programs for detecting structural damage such as cracks have required the fine-tuning of numerous parameters and experience-based expertise. A method for distinguishing different types of cracks applying deep learning has been developed using tunnel lining images. A classifier was created after learning from a large volume of images in two groups - either with "presence of a crack" or "absence of a crack." The classifier successfully recognized the presence or absence of cracks in images at a rate of more than 90%. Using a color-coded pixelated image to show the position of probable cracks, this paper proposes a hybrid detection method for analyzing cracks with a focus on their location and direction of progress.
机译:现有的用于检测诸如裂缝的结构损伤的图像处理程序需要对许多参数和基于经验的专业知识进行微调。已经使用隧道衬砌图像开发了一种通过深度学习来区分不同类型裂缝的方法。在从两组中的大量图像中学习后,创建了分类器-使用“存在裂纹”或“不存在裂纹”。分类器成功地识别出图像中是否存在裂纹。率超过90%。本文使用彩色编码的像素化图像显示可能出现的裂纹的位置,提出了一种混合检测方法来分析裂纹,重点是裂纹的位置和方向。

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