Detecting Canopy Gaps in Uneven-Aged Mixed Forests through the Combined Use of Unmanned Aerial Vehicle Imagery and Deep Learning

被引:0
|
作者
Htun, Nyo Me [1 ]
Owari, Toshiaki [2 ]
Tsuyuki, Satoshi [1 ]
Hiroshima, Takuya [1 ]
机构
[1] Univ Tokyo, Grad Sch Agr & Life Sci, Dept Global Agr Sci, Tokyo 1138657, Japan
[2] Univ Tokyo, Hokkaido Forest, Grad Sch Agr & Life Sci, Furano 0791563, Japan
基金
日本学术振兴会;
关键词
canopy gaps; uneven-aged mixed forest; UAV imagery; deep learning models; UAV;
D O I
10.3390/drones8090484
中图分类号
TP7 [遥感技术];
学科分类号
081102 ; 0816 ; 081602 ; 083002 ; 1404 ;
摘要
Canopy gaps and their associated processes play an important role in shaping forest structure and dynamics. Understanding the information about canopy gaps allows forest managers to assess the potential for regeneration and plan interventions to enhance regeneration success. Traditional field surveys for canopy gaps are time consuming and often inaccurate. In this study, canopy gaps were detected using unmanned aerial vehicle (UAV) imagery of two sub-compartments of an uneven-aged mixed forest in northern Japan. We compared the performance of U-Net and ResU-Net (U-Net combined with ResNet101) deep learning models using RGB, canopy height model (CHM), and fused RGB-CHM data from UAV imagery. Our results showed that the ResU-Net model, particularly when pre-trained on ImageNet (ResU-Net_2), achieved the highest F1-scores-0.77 in Sub-compartment 42B and 0.79 in Sub-compartment 16AB-outperforming the U-Net model (0.52 and 0.63) and the non-pre-trained ResU-Net model (ResU-Net_1) (0.70 and 0.72). ResU-Net_2 also achieved superior overall accuracy values of 0.96 and 0.97, outperforming previous methods that used UAV datasets with varying methodologies for canopy gap detection. These findings underscore the effectiveness of the ResU-Net_2 model in detecting canopy gaps in uneven-aged mixed forests. Furthermore, when these trained models were applied as transfer models to detect gaps specifically caused by selection harvesting using pre- and post-UAV imagery, they showed considerable potential, achieving moderate F1-scores of 0.54 and 0.56, even with a limited training dataset. Overall, our study demonstrates that combining UAV imagery with deep learning techniques, particularly pre-trained models, significantly improves canopy gap detection accuracy and provides valuable insights for forest management and future research.
引用
收藏
页数:23
相关论文
共 31 条
  • [21] Detection of on-tree chestnut fruits using deep learning and RGB unmanned aerial vehicle imagery for estimation of yield and fruit load
    Arakawa, Takumi
    Tanaka, Takashi S. T.
    Kamio, Shinji
    AGRONOMY JOURNAL, 2024, 116 (03) : 973 - 981
  • [22] Artificial intelligence-based smart agricultural systems for saffron cultivation with integration of Unmanned Aerial Vehicle imagery and deep learning approaches
    Nazeer, Ishrat
    Umer, Iyed
    Rout, Ranjeet Kumar
    Tanveer, M.
    COMPUTERS & ELECTRICAL ENGINEERING, 2024, 119
  • [23] A deep-learning-based tree species classification for natural secondary forests using unmanned aerial vehicle hyperspectral images and LiDAR
    Ma, Ye
    Zhao, Yuting
    Im, Jungho
    Zhao, Yinghui
    Zhen, Zhen
    ECOLOGICAL INDICATORS, 2024, 159
  • [24] Evaluation of Soil Properties, Topographic Metrics, Plant Height, and Unmanned Aerial Vehicle Multispectral Imagery Using Machine Learning Methods to Estimate Canopy Nitrogen Weight in Corn
    Yu, Jody
    Wang, Jinfei
    Leblon, Brigitte
    REMOTE SENSING, 2021, 13 (16)
  • [25] Deep Learning-Based Improved Automatic Building Extraction from Open-Source High Resolution Unmanned Aerial Vehicle (UAV) Imagery
    Maniyar, Chintan B.
    Kumar, Minakshi
    PROCEEDINGS OF UASG 2021: WINGS 4 SUSTAINABILITY, 2023, 304 : 51 - 66
  • [26] Mapping the Distribution of High-Value Broadleaf Tree Crowns through Unmanned Aerial Vehicle Image Analysis Using Deep Learning
    Htun, Nyo Me
    Owari, Toshiaki
    Tsuyuki, Satoshi
    Hiroshima, Takuya
    ALGORITHMS, 2024, 17 (02)
  • [27] Improving Forest Canopy Height Mapping in Wuyishan National Park Through Calibration of ZiYuan-3 Stereo Imagery Using Limited Unmanned Aerial Vehicle LiDAR Data
    Jian, Kai
    Lu, Dengsheng
    Lu, Yagang
    Li, Guiying
    FORESTS, 2025, 16 (01):
  • [28] Identification of High Nitrogen Use Efficiency Phenotype in Rice (Oryza sativa L.) Through Entire Growth Duration by Unmanned Aerial Vehicle Multispectral Imagery
    Liang, Ting
    Duan, Bo
    Luo, Xiaoyun
    Ma, Yi
    Yuan, Zhengqing
    Zhu, Renshan
    Peng, Yi
    Gong, Yan
    Fang, Shenghui
    Wu, Xianting
    FRONTIERS IN PLANT SCIENCE, 2021, 12
  • [29] Weed Detection from Unmanned Aerial Vehicle Imagery Using Deep Learning-A Comparison between High-End and Low-Cost Multispectral Sensors
    Seiche, Anna Teresa
    Wittstruck, Lucas
    Jarmer, Thomas
    SENSORS, 2024, 24 (05)
  • [30] Study on the Evolutionary Characteristics of Post-Fire Forest Recovery Using Unmanned Aerial Vehicle Imagery and Deep Learning: A Case Study of Jinyun Mountain in Chongqing, China
    Zhu, Deli
    Yang, Peiji
    SUSTAINABILITY, 2024, 16 (22)