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An analysis of timber sections and deep learning for wood species classification

机译:木材截面分析与木材种类分类的深度学习

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摘要

The wood species classification is an essential field of investigation that can help to combat illegal logging, then providing the timber certification and allowing the application of correct timber taxing. Today, the wood classification relies on highly qualified professionals that analyze texture patterns on timber sections. However, these professionals are scarce, costly, and subject to failure. Therefore, the automation of this task using computational methods is promising. Deep learning has proven to be the ultimate technique in computer vision tasks, but it has not been much exploited to perform timber classification due to the difficulty of building large databases to train such networks. In this study, we introduced the biggest data set of wood timber microscope images to the date, with 281 species, having three types of timber sections: transverse, radial, and tangential. We investigated the use of transfer learning from pre-trained deep neural networks for wood species classification and compared their results with a state-of-art pre-designed feature method. The experimental results show that traverse section images using a densely connected network achieved 98.7% of correct classification against 85.9% of standard pre-designed features.
机译:木材种类分类是一个必不可少的调查领域,可以帮助打击非法伐木,然后提供木材认证并允许应用正确的木材征税。今天,木材分类依赖于高度合格的专业人士,分析木材部分的纹理模式。但是,这些专业人员稀缺,昂贵,而且受到失败。因此,使用计算方法的这项任务的自动化是有前途的。深入学习已被证明是计算机视觉任务中的最终技术,但由于难以构建大型数据库来培训此类网络,因此易于执行木材分类。在本研究中,我们将最大的木材显微镜图像介绍到日期,具有281种,具有三种类型的木材部分:横向,径向和切向。我们调查了从预先训练的深神经网络进行转移学习,用于木种分类,并将其结果与最先进的预先设计的特征方法进行比较。实验结果表明,使用密集连接网络的横向部分图像达到了98.7%的正确分类,防止了85.9%的标准预设计功能。

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