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生态学杂志 ›› 2023, Vol. 42 ›› Issue (4): 997-1004.doi: 10.13292/j.1000-4890.202304.026

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基于深度卷积神经网络的树轮宽度测量算法

李爽1,李俊杰2,杨鹏1,史景宁1,唐丁洁3,向玮1*


  

  1. 1北京林业大学森林资源和环境管理国家林草局重点实验室, 北京 100083; 2广西林业勘测设计院, 南宁 530011; 3新疆农业大学林学与风景园林学院, 乌鲁木齐 830052)

  • 出版日期:2023-04-03 发布日期:2023-04-06

A tree ring width measurement algorithm method based on a deep convolutional neural network.

LI Shuang1, LI Junjie2, YANG Peng1, SHI Jingning1, TANG Dingjie3, XIANG Wei1*#br#

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  1. (1Key Laboratory of Forest Resources and Environment of State Forestry and Grassland Administration, Beijing Forestry University, Beijing 100083, China; 2Guangxi Forestry Survey and Design Institute, Nanning 530011, China; 3College of Forestry and Landscape Architecture, Xinjiang Agricultural University, Urumqi 830052, China).

  • Online:2023-04-03 Published:2023-04-06

摘要: 数字图像处理技术已被广泛用于树轮宽度测量,但大多集中在边界清晰可见的针叶树种,对于木材解剖结构复杂、树轮边界清晰度较差的阔叶树种,传统的图像处理技术表现不佳。为了改善阔叶树种的树轮边界识别精度,本文提出了一种基于U-Net卷积神经网络模型的树轮宽度测量算法。以鱼鳞云杉(Picea jezoensis var. komarovii)、臭冷杉(Abies nephrolepis)、红松(Pinus koraiensis)、白桦(Betula platyphylla)、枫桦(Betula costata)、榆树(Ulmus pumila)的树芯为对象,提出了一种基于U-Net的树轮边界检测模型。采用3种评价指标比较了U-Net方法与手工标注方法的差异,并与WinDENDRO测量得到的树轮宽度进行了精度对比。结果显示,U-Net识别到的树轮边界与实际边界精确匹配,尤其是对阔叶树种树轮边界的检测精度相比传统的数字图像处理方法有显著提高,通过3种评价指标证明所得到的树轮边界精确可靠,在树轮分析中具有较高的实用价值。


关键词: U-Net, 深度学习, 树轮宽度, 图像分割

Abstract: Digital image processing techniques have been widely used to measure tree ring width, but most of which focus on conifer species with clear boundary. For hardwood species with complex anatomical structure and poor boundary of tree ring, traditional image processing techniques have poor performance. To improve the accuracy of tree-ring boundary recognition of broad-leaved tree species, we developed a tree-ring width measurement algorithm based on U-Net convolutional neural network model. An automatic tree-ring boundary recognition model based on U-Net convolutional neural network was constructed. Based on U-Net, we proposed a tree-ring boundary detection model for the tree cores of Picea jezoensis var. komarovii, Abies nephrolepis, Pinus koraiensi, Betula platyphylla, Betula costata, and Ulmus pumila. Three evaluation indices were used to compare the differences between U-Net method and manual labeling method, and the accuracy of tree ring width measured by WinDENDRO was compared. The results showed that tree ring boundary identified by U-Net accurately matches the actual boundary. Importantly, the detection accuracy of the tree ring boundary of broad-leaved trees was significantly improved compared with the traditional digital image processing method. The obtained tree ring width is proved to be accurate and reliable as evaluated by three evaluation indices, which has high practical value in tree ring analysis.


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