Tree Species Classification by Multi-Season Collected UAV Imagery in a Mixed Cool-Temperate Mountain Forest

被引:0
|
作者
Avtar, Ram [1 ,2 ,3 ]
Chen, Xinyu [1 ]
Fu, Jinjin [1 ]
Alsulamy, Saleh [4 ]
Supe, Hitesh [1 ]
Pulpadan, Yunus Ali [5 ]
Louw, Albertus Stephanus [1 ]
Tatsuro, Nakaji [6 ]
机构
[1] Graduate School of Environmental Science, Hokkaido University, Sapporo,060-0810, Japan
[2] Faculty of Environmental Earth Science, Hokkaido University, Sapporo,060-0810, Japan
[3] Department of Civil Engineering, Chennai Institute of Technology, Tamilnadu, Chennai,600069, India
[4] Department of Architecture, College of Architecture & Planning, King Khalid University, Abha,61421, Saudi Arabia
[5] Department of Earth and Environmental Sciences, Indian Institute of Science Education and Research Mohali, Punjab, 140-306, India
[6] Field Science Center for Northern Biosphere, Hokkaido University, Sapporo,060-0809, Japan
关键词
Aerial vehicle - Broadleaf forest - Classification accuracy - Input variables - LiDAR - Machine-learning - Mixed forests - Species classification - Tree species - Unmanned aerial vehicle;
D O I
10.3390/rs16214060
中图分类号
学科分类号
摘要
Effective forest management necessitates spatially explicit information about tree species composition. This information supports the safeguarding of native species, sustainable timber harvesting practices, precise mapping of wildlife habitats, and identification of invasive species. Tree species identification and geo-location by machine learning classification of UAV aerial imagery offer an alternative to tedious ground surveys. However, the timing (season) of the aerial surveys, input variables considered for classification, and the model type affect the classification accuracy. This work evaluates how the seasons and input variables considered in the species classification model affect the accuracy of species classification in a temperate broadleaf and mixed forest. Among the considered models, a Random Forest (RF) classifier demonstrated the highest performance, attaining an overall accuracy of 83.98% and a kappa coefficient of 0.80. Simultaneously using input data from summer, winter, autumn, and spring seasons improved tree species classification accuracy by 14–18% from classifications made using only single-season input data. Models that included vegetation indices, image texture, and elevation data obtained the highest accuracy. These results strengthen the case for using multi-seasonal data for species classification in temperate broadleaf and mixed forests since seasonal differences in the characteristics of species (e.g., leaf color, canopy structure) improve the ability to discern species. © 2024 by the authors.
引用
收藏
相关论文
共 27 条
  • [21] A comparison of multispectral and multitemporal information in high spatial resolution imagery for classification of individual tree species in a temperate hardwood forest
    Key, T
    Warner, TA
    McGraw, JB
    Fajvan, MA
    REMOTE SENSING OF ENVIRONMENT, 2001, 75 (01) : 100 - 112
  • [22] Improving the classification of six evergreen subtropical tree species with multi-season data from leaf spectra simulated to WorldView-2 and RapidEye
    van Deventer, H.
    Cho, M. A.
    Mutanga, O.
    INTERNATIONAL JOURNAL OF REMOTE SENSING, 2017, 38 (17) : 4804 - 4830
  • [23] Seasonality of leaf litter and leaf area index data for various tree species in a cool-temperate deciduous broad-leaved forest, Japan, 2005-2014
    Nagai, Shin
    Nasahara, Kenlo Nishida
    Yoshitake, Shinpei
    Saitoh, Taku M.
    ECOLOGICAL RESEARCH, 2017, 32 (03) : 297 - 297
  • [24] Reproductive characteristics in an understory bamboo and gradual environmental changes after its dieback provide an extended opportunity for overstory tree regeneration in a mixed cool-temperate forest in central Japan
    Nakagawa, M.
    Yoda, K.
    Asahi, K.
    Yumigeta, Y.
    Watanabe, A.
    PLANT BIOLOGY, 2023, 25 (05) : 687 - 695
  • [25] Tree Crown Detection and Delineation in a Temperate Deciduous Forest from UAV RGB Imagery Using Deep Learning Approaches: Effects of Spatial Resolution and Species Characteristics
    Gan, Yi
    Wang, Quan
    Iio, Atsuhiro
    REMOTE SENSING, 2023, 15 (03)
  • [26] Multi-Species Individual Tree Segmentation and Identification Based on Improved Mask R-CNN and UAV Imagery in Mixed Forests
    Zhang, Chong
    Zhou, Jiawei
    Wang, Huiwen
    Tan, Tianyi
    Cui, Mengchen
    Huang, Zilu
    Wang, Pei
    Zhang, Li
    REMOTE SENSING, 2022, 14 (04)
  • [27] Single Tree Classification Using Multi-Temporal ALS Data and CIR Imagery in Mixed Old-Growth Forest in Poland
    Kaminska, Agnieszka
    Lisiewicz, Maciej
    Sterenczak, Krzysztof
    REMOTE SENSING, 2021, 13 (24)