Multi-model Approach for Tree Detection and Classification in Wallonia Region (Belgium)

Forests play a pivotal role in global ecosystems by sequestering carbon, preserving biodiversity, and providing valuable resources for both humans and wildlife. Monitoring and management of these forests require accurate, up-to-date information on individual trees and species composition—c...

Full description

Saved in:
Bibliographic Details
Main Authors: N. Dimarco, B. Bartiaux, L. Andreani, R. Schlögel
Format: Article
Language:English
Published: Copernicus Publications 2025-05-01
Series:The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
Online Access:https://isprs-archives.copernicus.org/articles/XLVIII-M-7-2025/259/2025/isprs-archives-XLVIII-M-7-2025-259-2025.pdf
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849309338338852864
author N. Dimarco
B. Bartiaux
L. Andreani
R. Schlögel
author_facet N. Dimarco
B. Bartiaux
L. Andreani
R. Schlögel
author_sort N. Dimarco
collection DOAJ
description Forests play a pivotal role in global ecosystems by sequestering carbon, preserving biodiversity, and providing valuable resources for both humans and wildlife. Monitoring and management of these forests require accurate, up-to-date information on individual trees and species composition—challenges that can be addressed with advanced remote sensing and deep learning. This paper presents a multi-season, multi-year approach to automatic tree detection and species classification in heterogeneous forests. Using over 5,000 high-resolution (0.25 m) RGB orthophoto tiles from the Wallonia region (spanning 2018–2023), we annotated more than 100,000 individual trees representing 14 classes of deciduous and coniferous species. A Faster R-CNN model trained for tree detection achieved a F1 score of 0.828 and a mAP@50 of 0.827, effectively locating tree crowns under varying illumination and phenological conditions. Meanwhile, a convolutional neural network (CNN) for species classification attained an overall accuracy of 0.937, accurately distinguishing most species and age classes. Despite strong performance, limitations persist, particularly in identifying small saplings and visually similar species (e.g., oak vs. beech). These findings highlight the potential of multi-temporal aerial imagery and deep learning to enhance forest inventories, reduce field survey costs, and inform targeted management.
format Article
id doaj-art-86f9d3dfabe447eb96ae72f9e97f1a28
institution Kabale University
issn 1682-1750
2194-9034
language English
publishDate 2025-05-01
publisher Copernicus Publications
record_format Article
series The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
spelling doaj-art-86f9d3dfabe447eb96ae72f9e97f1a282025-08-20T03:54:11ZengCopernicus PublicationsThe International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences1682-17502194-90342025-05-01XLVIII-M-7-202525926510.5194/isprs-archives-XLVIII-M-7-2025-259-2025Multi-model Approach for Tree Detection and Classification in Wallonia Region (Belgium)N. Dimarco0B. Bartiaux1L. Andreani2R. Schlögel3Spacebel sa., Earth Observation Applications, Angleur, BelgiumSpacebel sa., Earth Observation Applications, Angleur, BelgiumSpacebel sa., Earth Observation Applications, Angleur, BelgiumSpacebel sa., Earth Observation Applications, Angleur, BelgiumForests play a pivotal role in global ecosystems by sequestering carbon, preserving biodiversity, and providing valuable resources for both humans and wildlife. Monitoring and management of these forests require accurate, up-to-date information on individual trees and species composition—challenges that can be addressed with advanced remote sensing and deep learning. This paper presents a multi-season, multi-year approach to automatic tree detection and species classification in heterogeneous forests. Using over 5,000 high-resolution (0.25 m) RGB orthophoto tiles from the Wallonia region (spanning 2018–2023), we annotated more than 100,000 individual trees representing 14 classes of deciduous and coniferous species. A Faster R-CNN model trained for tree detection achieved a F1 score of 0.828 and a mAP@50 of 0.827, effectively locating tree crowns under varying illumination and phenological conditions. Meanwhile, a convolutional neural network (CNN) for species classification attained an overall accuracy of 0.937, accurately distinguishing most species and age classes. Despite strong performance, limitations persist, particularly in identifying small saplings and visually similar species (e.g., oak vs. beech). These findings highlight the potential of multi-temporal aerial imagery and deep learning to enhance forest inventories, reduce field survey costs, and inform targeted management.https://isprs-archives.copernicus.org/articles/XLVIII-M-7-2025/259/2025/isprs-archives-XLVIII-M-7-2025-259-2025.pdf
spellingShingle N. Dimarco
B. Bartiaux
L. Andreani
R. Schlögel
Multi-model Approach for Tree Detection and Classification in Wallonia Region (Belgium)
The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
title Multi-model Approach for Tree Detection and Classification in Wallonia Region (Belgium)
title_full Multi-model Approach for Tree Detection and Classification in Wallonia Region (Belgium)
title_fullStr Multi-model Approach for Tree Detection and Classification in Wallonia Region (Belgium)
title_full_unstemmed Multi-model Approach for Tree Detection and Classification in Wallonia Region (Belgium)
title_short Multi-model Approach for Tree Detection and Classification in Wallonia Region (Belgium)
title_sort multi model approach for tree detection and classification in wallonia region belgium
url https://isprs-archives.copernicus.org/articles/XLVIII-M-7-2025/259/2025/isprs-archives-XLVIII-M-7-2025-259-2025.pdf
work_keys_str_mv AT ndimarco multimodelapproachfortreedetectionandclassificationinwalloniaregionbelgium
AT bbartiaux multimodelapproachfortreedetectionandclassificationinwalloniaregionbelgium
AT landreani multimodelapproachfortreedetectionandclassificationinwalloniaregionbelgium
AT rschlogel multimodelapproachfortreedetectionandclassificationinwalloniaregionbelgium