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A Multi-Classifier System for Rock Mass Crack Segmentation Based on Convolutional Neural Networks

机译:基于卷积神经网络的岩体裂纹分割多分类系统

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In rock masses, presence of cracks greatly affects the behavior of it. Obtaining the cracks is very important in specialized analysis of rock mechanics. In computer vision applications, crack segmentation task in an intricate texture such as rock mass, is difficult. Crack segmentation problem can consider as an edge detection task so we can use edge detection methods to achieve it. In this paper, we propose a multi-classifier system based on deep convolutional neural network (CNN) to predict pixel-wise cracks in rock mass images. We provide a dataset consists of 489 RGB rock mass images with manual ground truths. For training classifiers, we create two sub-datasets obtained by mentioned dataset. Also we introduce a new approach of image labeling to improve general methods. Based on the results, our method achieves F-score of 84.0, which has a best performance compared to different methods.
机译:在岩石群众中,裂缝的存在极大地影响了它的行为。 获得裂缝在岩石力学专业分析中非常重要。 在计算机视觉应用中,诸如岩石质量的复杂质地中的裂缝分割任务是困难的。 裂缝分割问题可以考虑作为边缘检测任务,因此我们可以使用边缘检测方法来实现它。 在本文中,我们提出了一种基于深卷积神经网络(CNN)的多分类系统,以预测岩体批量图像中的像素明智的裂缝。 我们提供数据集由489个RGB岩石大规模图像组成,具有手动地面真理。 对于培训分类器,我们创建由提到的数据集获得的两个子数据集。 此外,我们还介绍了一种新的图像标签方法,以提高一般方法。 根据结果,我们的方法实现了84.0的F分,与不同方法相比具有最佳性能。

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