RESEARCH ON BAMBOO DEFECT SEGMENTATION AND CLASSIFICATION BASED ON IMPROVED U-NET NETWORK

Junfeng Hu, Xi Yu, Yafeng Zhao, Kaiyao Wang, Wenlin Lu
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引用次数: 2

Abstract

In this paper, computer vision technology is used to quickly and accurately identify and classify the surface defects of processed bamboo, which overcomes the low efficiencyof manual identification. The datasets consist of 6360 defective bamboo mat images of fourcategories taken by the author at the same position, which are split at a ratio of 8:2 for training and testing. In this experiment, we improved the U-net to segment the datasets and use VGG16, GoogLeNet and ResNet50 with attention mechanism for classification and comparison.The experimental results show that the accuracy of this method is 5.65% higher thanthe commonly used neural network method. The highest accuracy rate is 99.2%.
基于改进u-net网络的竹材缺陷分割与分类研究
本文采用计算机视觉技术对加工过的竹材表面缺陷进行快速准确的识别和分类,克服了人工识别效率低的缺点。数据集由作者在同一位置拍摄的四类缺陷竹席图像6360张组成,按8:2的比例进行分割,用于训练和测试。在本实验中,我们改进了U-net对数据集进行分割,并使用VGG16、GoogLeNet和ResNet50带注意机制进行分类和比较。实验结果表明,该方法的准确率比常用的神经网络方法提高了5.65%。最高准确率为99.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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