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Name (Pinyin):zhenzhen

School/Department:林学院

Education Level:With Certificate of Graduation for Doctorate Study

Degree:Doctoral Degree in Agriculture

Status:Employed

Discipline:
Forest Management

Honors and Titles:
2024年10月 东北林业大学2023~2024年度优秀本科生导师奖
2023年11月 获得2023年东北林业大学青年教师教学竞赛(农林组)二等奖
2023年04月 第十届“共享杯”大学生科技资源共享服务创新大赛优秀指导教师奖
2023年08月 东北林业大学2022~2023年度优秀本科生导师奖
2023年07月 指导本科生参加“挑战杯”黑龙江省大学生课外学术科技作品大赛荣获三等奖
2022年10月 东北林业大学2021~2022年度优秀本科生导师奖
2021年09月 东北林业大学2020~2021年度教学质量二等奖
2021年05月 指导本科生参加美国大学生数学建模大赛(ICM)获得一等奖(M奖)
2020年10月 东北林业大学2019~2020年度教学质量二等奖
2019年12月 东北林业大学林学院2019年度本科课程建设优秀奖
2018年06月 第七届梁希青年论文奖三等奖
2017年10月 东北林区主要树种(组)林木及林分动态预测技术,黑龙江省科学技术奖,二等奖(第8完成人),黑龙江省人民政府
2017年04月 东北林区主要树种(组)基础模型系统的研究,梁希林业科学技术奖,二等奖(第6完成人),国家林业局,中国林学会
2016年12月 GIScience & Remote Sensing杂志最佳审稿人
2016年09月 第六届梁希青年论文奖三等奖
2015年12月 第三届“共享杯”大学生科技资源共享服务创新大赛优秀指导教师奖
2015年09月 东北林业大学2014~2015年度教学质量二等奖
2014年09月 第五届梁希青年论文奖二等奖

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A deep-learning-based tree species classification for natural secondary forests using unmanned aerial vehicle hyperspectral images and LiDAR

Date:2025-06-02 clicks:

Impact Factor:6.9

DOI number:10.1016/j.ecolind.2024.111608

Journal:Ecological Indicators

Key Words:Light detection and ranging data;Hyperspectral image;Convolutional neural network;Individual tree crown delineation;Deep learning model interpretation

Abstract:Accurate tree species classification is essential for forest resource management and biodiversity assessment. However, classifying tree species becomes challenging in natural secondary forests due to the difficulties in outlining the tree crown boundary. In this study, an object-based framework for tree species classification in the Experimental Forestry Farm of Northeast Forestry University, located in Heilongjiang Province, China, was developed based on unmanned aerial vehicle (UAV) hyperspectral images (HSIs) and UAV light detection and ranging (LiDAR) data using convolutional neural networks (CNNs). The study area was characterized by representative natural secondary forests that encompass diverse tree species, such as Korean pine (Pinus koraiensis Sieb. et Zucc.), White birch (Betula platyphylla Suk.), Siberian elm (Ulmus pumila L.), and Manchurian ash (Fraxinus mandshurica Rupr.). This study included two key processes: (1) the u-shaped network (U-net) algorithm was employed with the simple linear iterative clustering (SLIC) algorithm, that is, the U-SLIC algorithm, for individual tree crown delineation (ITCD), and (2) the performances of one-dimensional CNN (1D-CNN), twodimensional CNN (2D-CNN), and three-dimensional CNN (3D-CNN) models for tree species classification were compared while investigating the role of an attention mechanism (convolutional block attention module, CBAM) added to CNN models (1D-/2D-/3D-CNN + CBAM). The results showed that the U-SLIC algorithm obtained a satisfactory accuracy for the ITCD procedure, with a recall of 0.92, precision of 0.79, and F-score of 0.85. The feature selection effectively enhanced the CNN models’ performances for tree species classification. Furthermore, adding the CBAM resulted in overall accuracy (OA) improvements of 0.08, 0.11, and 0.09 for the 1D-CNN, 2DCNN, and 3D-CNN, respectively. The 1D-CNN + CBAM model performed best with an OA of 0.83 when utilizing the selected HSI and LiDAR features. This framework highlighted the utilization and integration of multiple deeplearning algorithms in complex natural forests, serving as prerequisites for forest management decisions, biodiversity conservation, and carbon stock estimation.

Co-author:Yuting Zhao,Jungho Im

First Author:Q1, TOP, Ye Ma

Indexed by:Journal paper

Correspondence Author:Zhen Zhen*,Yinghui Zhao*

Volume:159

Page Number:111608

ISSN No.:1470160X

Translation or Not:no

Date of Publication:2024-01-01

Included Journals:SCI

Pre One:LUFFD-YOLO: A Lightweight Model for UAV Remote Sensing Forest Fire Detection Based on Attention Mechanism and Multi-Level Feature Fusion Next One:Novel Features of Canopy Height Distribution for Aboveground Biomass Estimation Using Machine Learning: A Case Study in Natural Secondary Forests