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Improved Damage Characteristics Identification Method of Concrete CT Images Based on Region Convolutional Neural Network

机译:基于区卷积神经网络的混凝土图像的改进损伤特征识别方法

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摘要

The detection of internal damage characteristics of concrete is an important aspect of damage evolution mechanism in concrete meso-structure. In this paper, the improved Faster R-CNN is used to detect the porosity and cracks in concrete CT images. Based on the Faster R-CNN, ResNet-101 and ResNet-50 are used as the main framework. Feature pyramid network (FPN) and ROI Align are introduced to improve the performance of the model. FPN can generate high quality feature maps. ROI Align solves the region mismatch caused by the quantization operation. Experiments show that the detection accuracy of ResNet-101 + FPN + ROI Align reaches 87.08%, which is 4.74 higher than that of ResNet-101. The detection accuracy of ResNet-50 + FPN + ROI Align reached 81.36%, which is 3.12% points higher than ResNet-50. These two improved algorithms are slower than the original algorithm for the detection time of a single picture. An effective method is provided to analyze concrete meso-damage evolution through the research.
机译:混凝土内部损伤特性的检测是混凝土中型结构中损伤进化机制的一个重要方面。在本文中,改进的更高的R-CNN用于检测混凝土CT图像中的孔隙率和裂缝。基于更快的R-CNN,RESET-101和RESET-50用作主框架。采用金字塔网络(FPN)和ROI对齐,以提高模型的性能。 FPN可以生成高质量的特征图。 ROI对准由量化操作引起的区域不匹配。实验表明,Reset-101 + FPN + ROI对齐的检测精度达到87.08%,比Resnet-101高4.74。 Reset-50 + FPN + ROI对齐的检测精度达到81.36%,比Resnet-50高3.12%。这两个改进的算法比单张图片的检测时间的原始算法慢。提供了一种有效的方法来通过研究分析具体的中间损伤演化。

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