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Automated crack segmentation via saturation channel thresholding area classification and fusion of modified level set segmentation with Canny edge detection

机译:通过饱和通道阈值区域分类和修改级别集分割与Canny Edge检测的自动裂缝分割

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摘要

Automatic detection of complex cracks on rough concrete surfaces via image processing is a challenging task. The most current effective methods involve deep learning schemes. These are usually computationally and structurally complex. Recently, relatively simplified algorithms were developed for effective segmentation of crack features. However, these approaches still could not consistently and accurately extract such features from extremely noisy images of rough concrete surfaces with complex crack patterns. This study describes crack feature segmentation algorithms based on wavelet coefficient adjustment, nonlinear filter pre-processing, saturation channel extraction, adaptive threshold-based edge detection and fuzzy clustering-based area classification. Additional modifications include a new energy function for active contour segmentation algorithm. Adaptive localized mask generation is also proposed for automatic region-based segmentation. Furthermore, a binary fusion stage is incorporated for improved edge feature extraction. The quantitative and visual evaluation of the proposed schemes show improvement in results compared to several recent state-of-the-art algorithms.
机译:通过图像处理自动检测粗混凝土表面上的复杂裂缝是一个具有挑战性的任务。最新的有效方法涉及深度学习计划。这些通常在计算上和结构上复杂。最近,开发了相对简化的算法,用于有效分割裂缝特征。然而,这些方法仍然无法始终如一地精确地提取具有复杂裂纹图案的粗糙混凝土表面极度噪声图像的这种特征。本研究描述了基于小波系数调整,非线性滤波器预处理,饱和通道提取,基于自适应阈值的边缘检测和基于模糊聚类的区域分类的裂缝特征分割算法。附加修改包括用于主动轮廓分割算法的新能量函数。还提出了自动局部掩模生成,用于基于自动区域的分段。此外,将二元融合阶段合并用于改进的边缘特征提取。与几个最近的最新算法相比,所提出的方案的定量和视觉评估表明了结果的改进。

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