Deforestation detection using deep learning-based semantic segmentation techniques: a systematic review

Deforestation poses a critical global threat to Earth's ecosystem and biodiversity, necessitating effective monitoring and mitigation strategies. The integration of deep learning with remote sensing offers a promising solution for precise deforestation segmentation and detection. This paper pro...

Full description

Bibliographic Details
Published in:FRONTIERS IN FORESTS AND GLOBAL CHANGE
Main Authors: Jelas, Imran Md; Zulkifley, Mohd Asyraf; Abdullah, Mardina; Spraggon, Martin
Format: Review
Language:English
Published: FRONTIERS MEDIA SA 2024
Subjects:
Online Access:https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001162548100001
author Jelas
Imran Md; Zulkifley
Mohd Asyraf; Abdullah
Mardina; Spraggon
Martin
spellingShingle Jelas
Imran Md; Zulkifley
Mohd Asyraf; Abdullah
Mardina; Spraggon
Martin
Deforestation detection using deep learning-based semantic segmentation techniques: a systematic review
Environmental Sciences & Ecology; Forestry
author_facet Jelas
Imran Md; Zulkifley
Mohd Asyraf; Abdullah
Mardina; Spraggon
Martin
author_sort Jelas
spelling Jelas, Imran Md; Zulkifley, Mohd Asyraf; Abdullah, Mardina; Spraggon, Martin
Deforestation detection using deep learning-based semantic segmentation techniques: a systematic review
FRONTIERS IN FORESTS AND GLOBAL CHANGE
English
Review
Deforestation poses a critical global threat to Earth's ecosystem and biodiversity, necessitating effective monitoring and mitigation strategies. The integration of deep learning with remote sensing offers a promising solution for precise deforestation segmentation and detection. This paper provides a comprehensive review of deep learning methodologies applied to deforestation analysis through satellite imagery. In the face of deforestation's ecological repercussions, the need for advanced monitoring and surveillance tools becomes evident. Remote sensing, with its capacity to capture extensive spatial data, combined with deep learning's prowess in recognizing complex patterns to enable precise deforestation assessment. Integration of these technologies through state-of-the-art models, including U-Net, DeepLab V3, ResNet, SegNet, and FCN, has enhanced the accuracy and efficiency in detecting deforestation patterns. The review underscores the pivotal role of satellite imagery in capturing spatial information and highlights the strengths of various deep learning architectures in deforestation analysis. Multiscale feature learning and fusion emerge as critical strategies enabling deep networks to comprehend contextual nuances across various scales. Additionally, attention mechanisms combat overfitting, while group and shuffle convolutions further enhance accuracy by reducing dominant filters' contribution. These strategies collectively fortify the robustness of deep learning models in deforestation analysis. The integration of deep learning techniques into remote sensing applications serves as an excellent tool for deforestation identification and monitoring. The synergy between these fields, exemplified by the reviewed models, presents hope for preserving invaluable forests. As technology advances, insights from this review will drive the development of more accurate, efficient, and accessible deforestation detection methods, contributing to the sustainable management of the planet's vital resources.
FRONTIERS MEDIA SA

2624-893X
2024
7

10.3389/ffgc.2024.1300060
Environmental Sciences & Ecology; Forestry
gold
WOS:001162548100001
https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001162548100001
title Deforestation detection using deep learning-based semantic segmentation techniques: a systematic review
title_short Deforestation detection using deep learning-based semantic segmentation techniques: a systematic review
title_full Deforestation detection using deep learning-based semantic segmentation techniques: a systematic review
title_fullStr Deforestation detection using deep learning-based semantic segmentation techniques: a systematic review
title_full_unstemmed Deforestation detection using deep learning-based semantic segmentation techniques: a systematic review
title_sort Deforestation detection using deep learning-based semantic segmentation techniques: a systematic review
container_title FRONTIERS IN FORESTS AND GLOBAL CHANGE
language English
format Review
description Deforestation poses a critical global threat to Earth's ecosystem and biodiversity, necessitating effective monitoring and mitigation strategies. The integration of deep learning with remote sensing offers a promising solution for precise deforestation segmentation and detection. This paper provides a comprehensive review of deep learning methodologies applied to deforestation analysis through satellite imagery. In the face of deforestation's ecological repercussions, the need for advanced monitoring and surveillance tools becomes evident. Remote sensing, with its capacity to capture extensive spatial data, combined with deep learning's prowess in recognizing complex patterns to enable precise deforestation assessment. Integration of these technologies through state-of-the-art models, including U-Net, DeepLab V3, ResNet, SegNet, and FCN, has enhanced the accuracy and efficiency in detecting deforestation patterns. The review underscores the pivotal role of satellite imagery in capturing spatial information and highlights the strengths of various deep learning architectures in deforestation analysis. Multiscale feature learning and fusion emerge as critical strategies enabling deep networks to comprehend contextual nuances across various scales. Additionally, attention mechanisms combat overfitting, while group and shuffle convolutions further enhance accuracy by reducing dominant filters' contribution. These strategies collectively fortify the robustness of deep learning models in deforestation analysis. The integration of deep learning techniques into remote sensing applications serves as an excellent tool for deforestation identification and monitoring. The synergy between these fields, exemplified by the reviewed models, presents hope for preserving invaluable forests. As technology advances, insights from this review will drive the development of more accurate, efficient, and accessible deforestation detection methods, contributing to the sustainable management of the planet's vital resources.
publisher FRONTIERS MEDIA SA
issn
2624-893X
publishDate 2024
container_volume 7
container_issue
doi_str_mv 10.3389/ffgc.2024.1300060
topic Environmental Sciences & Ecology; Forestry
topic_facet Environmental Sciences & Ecology; Forestry
accesstype gold
id WOS:001162548100001
url https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001162548100001
record_format wos
collection Web of Science (WoS)
_version_ 1809678632535195648