Concrete Crack Detection Using Multi-Source Data Augmentation in Deep Learning Models

Daniel Einarson, Dawit Mengistu
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Abstract

Image processing tasks have benefited from deep learning models based on convolutional neural networks. However, the success of image classification models is dependent on several factors such image quality, dataset size and class distribution. Achieving acceptable accuracies with datasets not meeting these requirements is challenging. Domain specific dataset augmentation techniques have been proposed to mitigate the problem. This paper investigates adaptation of multi-source datasets as an augmentation approach to improve accuracy of crack detection in bridge concrete structures from low quality images in limited and imbalanced datasets. While experimental results show that data augmentation can improve accuracy of detection, we anticipate achieving even better results by combining this approach with generative machine learning models in future research.
利用深度学习模型中的多源数据增强技术检测混凝土裂缝
图像处理任务得益于基于卷积神经网络的深度学习模型。然而,图像分类模型的成功取决于多个因素,如图像质量、数据集大小和类别分布。要在不符合这些要求的数据集上实现可接受的准确度,具有很大的挑战性。有人提出了针对特定领域的数据集增强技术来缓解这一问题。本文研究了适应多源数据集的增强方法,以提高从有限且不平衡的数据集中的低质量图像中检测桥梁混凝土结构裂缝的准确性。实验结果表明,数据扩增可以提高检测的准确性,我们预计在未来的研究中,通过将这种方法与生成式机器学习模型相结合,可以取得更好的结果。
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