Deep Learning Method of Precious Wood Image Classification Based on Microscopic Computed Tomography

IF 0.9 4区 材料科学 Q4 MATERIALS SCIENCE, CHARACTERIZATION & TESTING Russian Journal of Nondestructive Testing Pub Date : 2025-01-16 DOI:10.1134/S1061830924602447
Xiaoxia Yang, Zhishuai Zheng, Huanqi Zheng, Xiaoping Liu
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Abstract

Correctly identifying precious wood species is crucial for import and export trade and furniture material identification. This study utilizes nondestructive testing (microscopic computed tomography, Micro-CT) to capture microscopic images of the transverse, radial, and tangential sections of 24 precious wood species, creating a comprehensive dataset. The SLConNet deep learning model is developed, enhancing recognition accuracy through multi-scale convolution and an improved residual block structure. The experiment results show that the classification accuracy of the transverse, radial and tangential sections is 98.72, 96.75, and 95.36%, respectively, when the gain value is 0.8. The model outperforms traditional models like Alexnet, ResNet50, Inception-V3, and Xception. This research highlights the efficiency of nondestructive testing in obtaining a large number of microscopic wood images, compared to traditional anatomical methods. The SLConNet model showcases high accuracy in precision, recall, and specificity, suggesting its potential for widespread applications in wood classification.

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基于显微计算机断层扫描的珍贵木材图像分类深度学习方法
正确识别名贵木材品种对进出口贸易和家具材料鉴定至关重要。本研究利用无损检测(显微计算机断层扫描,Micro-CT)捕获24种珍贵木材的横向、径向和切向切片的显微图像,创建了一个全面的数据集。开发了SLConNet深度学习模型,通过多尺度卷积和改进的残差块结构提高了识别精度。实验结果表明,当增益值为0.8时,横截面、径向和切向截面的分类精度分别为98.72、96.75和95.36%。该模型优于传统模型,如Alexnet, ResNet50, Inception-V3和Xception。与传统的解剖方法相比,本研究突出了无损检测在获得大量微观木材图像方面的效率。SLConNet模型在精度、召回率和特异性方面具有较高的准确性,表明其在木材分类中具有广泛应用的潜力。
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来源期刊
Russian Journal of Nondestructive Testing
Russian Journal of Nondestructive Testing 工程技术-材料科学:表征与测试
CiteScore
1.60
自引率
44.40%
发文量
59
审稿时长
6-12 weeks
期刊介绍: Russian Journal of Nondestructive Testing, a translation of Defectoskopiya, is a publication of the Russian Academy of Sciences. This publication offers current Russian research on the theory and technology of nondestructive testing of materials and components. It describes laboratory and industrial investigations of devices and instrumentation and provides reviews of new equipment developed for series manufacture. Articles cover all physical methods of nondestructive testing, including magnetic and electrical; ultrasonic; X-ray and Y-ray; capillary; liquid (color luminescence), and radio (for materials of low conductivity).
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