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ARF-Crack: rotation invariant deep fully convolutional network for pixel-level crack detection

机译:ARF-Crack:旋转不变深度全卷积网络,用于像素级裂纹检测

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摘要

Autonomous detection of structural defect from images is a promising, but also challenging task to replace manual inspection. With the development of deep learning algorithms, several studies have adopted deep convolutional neural networks (CNN) or fully convolutional networks (FCN) to detect cracks in pixel-level. However, a fundamental property of cracks, that they are rotation invariant, has never been exploited. Although the rotation-invariant property can be implicitly learned by data augmentation, the network needs more parameters to learn features of different orientations and thus tend to overfit the training data. In this study, a rotation-invariant FCN called ARF-Crack is proposed that utilizes the rotation-invariant property of cracks explicitly. The architecture of a state-of-the-art FCN called DeepCrack for pixel-level crack detection is adopted and revised where active rotating filters (ARFs) are used to encode the rotation-invariant property into the network. The proposed ARF-Crack is evaluated on several benchmark datasets including concrete cracks, pavement cracks and corrosion images. The experimental results show that the proposed ARF-Crack requires less number of network parameters and achieves the highest average precision values for all the benchmark datasets compared to other approaches. The proposed ARF-Crack has the potential of detecting other rotation-invariant defects.
机译:自主检测图像的结构缺陷是一个很有希望的,但也具有挑战性的任务来取代手动检查。随着深度学习算法的发展,几项研究采用了深度卷积神经网络(CNN)或完全卷积网络(FCN)来检测像素级别的裂缝。然而,他们是旋转不变的裂缝的基本属性从未被利用过。虽然可以通过数据增强隐式地学习旋转不变性,但是网络需要更多的参数来学习不同方向的特征,因此倾向于过度提供训练数据。在该研究中,提出了一种称为ARF裂纹的旋转不变的FCN,其利用明确地利用裂缝的旋转不变性。采用和修改了称为像素级裂纹检测的最先进的FCN的架构,其中用于将旋转不变性对网络中的旋转不变性进行编码。在包括混凝土裂缝,路面裂缝和腐蚀图像的几个基准数据集上评估所提出的ARF裂缝。实验结果表明,所提出的ARF裂缝需要较少数量的网络参数,并与其他方法相比,实现所有基准数据集的最高平均精度值。所提出的ARF裂缝具有检测其他旋转不变缺陷的可能性。

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