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Surface crack detection based on image stitching and transfer learning with pretrained convolutional neural network

机译:基于图像拼接的表面裂纹检测与普拉覆盖卷积神经网络的转移学习

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摘要

During the operating lifecycle of civil structures, cracks will occur inevitably, which may pose great threat to the safety of the structures without timely maintenance. Digital image processing techniques have great potential in automatically detecting cracks, which can replace the labor-intensive and highly subjective traditional manual on-site inspections. Therefore, this paper presents a crack detection technology based on a convolutional neural network, GoogLeNet Inception V3. Firstly, a crack image dataset is acquired and constructed, which includes 2682 images with cracks and 983 images without crack at a resolution of 256 x 256 pixels. Then, based on a transfer learning method, the pretrained GoogLeNet Inception V3 model is retrained by the crack dataset for better identifying the crack images. The accuracy of the final trained model on the test set can reach 0.985. Moreover, image stitching based on Oriented FAST and Rotated BRIEF feature matching algorithm is realized, in order to overcome the limitation of camera field of view. Compared with the traditional image processing technology, the method adopted in this work can automatically study the characteristics of the object from the dataset, which can adapt to the complex real environment. Due to the transfer learning method, the crack detection can be achieved based on the existing well-trained models after being retrained by a small dataset.
机译:在民用结构的运行生命周期中,裂缝将不可避免地发生,这可能对结构的安全构成了巨大的威胁,而无需及时维护。数字图像处理技术在自动检测裂缝中具有很大的潜力,可以取代劳动密集型和高度主观的传统手册现场检查。因此,本文提出了一种基于卷积神经网络的裂缝检测技术,Googlenet Inception V3。首先,获取和构造裂缝图像数据集,其包括具有裂缝和983图像的2682个图像,而没有裂缝的分辨率为256×256像素。然后,基于传送学习方法,由裂缝数据集再培训预制的Googlenet Incepion V3模型,以便更好地识别裂缝图像。测试集上最终训练模型的准确性可以达到0.985。此外,实现了基于定向的快速和旋转简短特征匹配算法的图像拼接,以克服相机视野的限制。与传统的图像处理技术相比,本工作中采用的方法可以自动研究来自数据集的对象的特征,这可以适应复杂的真实环境。由于传输学习方法,可以基于由小型数据集再培训之后的现有训练良好的型号来实现裂缝检测。

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