甄贞

个人信息Personal Information

教师拼音名称:zhenzhen

所在单位:林学院

学历:博士研究生毕业

联系方式:电话:(+86) 18745687693 邮箱:zhenzhen@nefu.edu.cn zhzhen2011@gmail.com

学位:农学博士学位

在职信息:在职

学科:森林经理学

论文成果

当前位置: 中文主页 >> 科学研究 >> 论文成果

Crown-BERT: a crown-morphology-aware deep learning framework for individual tree species classification using UAV LiDAR and hyperspectral data

点击次数:

影响因子:6.9

DOI码:10.1080/15481603.2026.2671600

所属单位:东北林业大学

发表刊物:GIScience & Remote Sensing (Q1)

刊物所在地:英国(牛津,Taylor & Francis 出版社总部)

关键字:Individual tree speciesclassification; deep learning;BERT; LiDAR; hyperspectral

摘要:Accurate individual tree species classification using fused unmanned aerial vehicle(UAV) hyperspectral (HSI) and light detection and ranging (LiDAR) data is fundamentalfor forest inventory and biodiversity assessment, yet remains challenging because ofirregular crown morphology, limited species annotations, and the high model complex-ity induced by high-dimensional multimodal features. To address these challenges, wepropose Crown-BERT (Bidirectional Encoder Representations from Transformers), alightweight, crown-morphology-aware deep learning framework for crown-levelHSI–LiDAR classification. Crown-BERT introduces dynamic crown masking (DCM) andcrown positional encoding (CPE) to explicitly encode valid canopy boundaries andintra-crown spatial structure, and employs crown masked pixel modeling (CMPM) as aself-supervised pre-training strategy to learn transferable feature representations fromabundant unlabeled crown samples. These components are integrated into a task-specific lightweight hybrid architecture that combines efficient convolutional opera-tions with transformer-based global modeling, thereby reducing parameter redundancywhile preserving classification performance. Under independent training and testing onthree UAV datasets, Crown-BERT achieved overall accuracies of 83.1%, 85.4%, and 90.8%on MS-2021, MS-2022, and TH-2024 dataset, respectively, with only 0.9 million parame-ters. It outperformed standard CNN and Vision Transformer baselines by 17.9% to 23.5%in overall accuracy, and further exceeded representative HSI–LiDAR fusion-based clas-sificaition models, improving overall accuracy by 5.1%–5.9% over hierarchical CNN andtransformer (HCT) and by 9.7%–11.2% over 3D-CNN across the three datasets. Resultsfrom MS-2021 and MS-2022 indicate that the proposed framework maintained stableperformance under interannual spectral variation, while the strong performance on TH-2024 further demonstrates its robustness under different ecological conditions; inaddition, transfer-based adaptation with AdaBN further improved cross-year applicabil-ity. Therefore, Crown-BERT provides an efficient and morphology-aware solution forindividual tree species classification in UAV-based forest monitoring under complex andvariable stand conditions, with strong potential for improving classification accuracyand reducing manual annotation.

合写作者:Yang Zhao,Yu Han,Yinghui Zhao

第一作者:Xinbo Wang

论文类型:期刊论文

通讯作者:Zhen Zhen*

论文编号:2671600

学科门类:工学

文献类型:J

卷号:63

期号:1

页面范围:2671600

ISSN号:1947-9345(印刷版)/ 1548-1603(电子版)

是否译文:

发表时间:2026-01-01

收录刊物:SCI