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基于改进UNet网络的机制砂石粉分割量化方法
引用本文:耿方圆,高尧,李伟,裴莉莉,袁博.基于改进UNet网络的机制砂石粉分割量化方法[J].计算机系统应用,2022,31(5):213-221.
作者姓名:耿方圆  高尧  李伟  裴莉莉  袁博
作者单位:长安大学 信息工程学院, 西安 710064
基金项目:国家自然科学基金(51978071); 长安大学中央高校基本科研业务费专项资金(300102249301, 300102249306, 300102249102)
摘    要:机制砂是机制砂混凝土的细骨料,其质量优劣对机制砂混凝土的强度、工作性、耐久性等性能影响十分显著,而其石粉含量决定着机制砂的质量优劣.由于传统的石粉检测方法程序存在繁琐、时间久、准确率低且难以量化等难题,本文提出了一种针对机制砂特征的改进型UNet网络的机制砂石粉分割量化方法.首先利用光学显微镜设备对机制砂颗粒进行图像采...

关 键 词:石粉分割  深度残差结构  注意力机制  UNet
收稿时间:2021/7/16 0:00:00
修稿时间:2021/8/18 0:00:00

Segmentation and Quantification Method of Machine-made Sand Powder Based on Improved UNet Network
GENG Fang-Yuan,GAO Yao,LI Wei,PEI Li-Li,YUAN Bo.Segmentation and Quantification Method of Machine-made Sand Powder Based on Improved UNet Network[J].Computer Systems& Applications,2022,31(5):213-221.
Authors:GENG Fang-Yuan  GAO Yao  LI Wei  PEI Li-Li  YUAN Bo
Abstract:Machine-made sand is the fine aggregate for machine-made sand concrete. The quality of machine-made sand, determined by the stone powder content, has a significant impact on the strength, workability, durability, and other performance of machine-made sand concrete. Considering that with low accuracy and long duration, the traditional stone powder detection methods are cumbersome and difficult to quantify, this study proposes an improved UNet model based on the characteristics of machine-made sand. First, optical microscope equipment is used to collect images of machine-made sand particles, and these images are preprocessed by means of contrast enhancement, the look-up table algorithm, low-pass filtering, etc. Then, the deep residual and attention mechanism module is introduced to build an improved UNet model. Finally, segmentation and quantitative calculation are conducted on the stone powder in machine-made sand. The results show that the segmentation accuracy of the deep neural network constructed in this paper on the machine-made sand training dataset and the verification dataset is as high as 95.2% and 95.94%, respectively, and compared to the UNet, FCN, and Res-UNet methods, this method has significantly improved the segmentation effect on the same dataset.
Keywords:stone powder segmentation  deep residual structure  attention mechanism  UNet
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