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

Imran Md Jelas, M. A. Zulkifley, Mardina Abdullah, Martin Spraggon
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Abstract

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.
利用基于深度学习的语义分割技术检测毁林情况:系统性综述
森林砍伐对地球生态系统和生物多样性构成了严重的全球性威胁,因此必须采取有效的监测和缓解战略。深度学习与遥感技术的结合为精确划分和检测森林砍伐提供了一种前景广阔的解决方案。本文全面回顾了将深度学习方法应用于卫星图像森林砍伐分析的情况。面对毁林造成的生态影响,对先进监测和监控工具的需求变得显而易见。遥感技术能够捕捉大量空间数据,结合深度学习在识别复杂模式方面的优势,可以对毁林情况进行精确评估。通过最先进的模型(包括 U-Net、DeepLab V3、ResNet、SegNet 和 FCN)整合这些技术,提高了检测毁林模式的准确性和效率。综述强调了卫星图像在捕捉空间信息方面的关键作用,并突出了各种深度学习架构在森林砍伐分析中的优势。多尺度特征学习和融合是使深度网络能够理解不同尺度上下文细微差别的关键策略。此外,注意力机制可以对抗过度拟合,而分组和洗牌卷积则可以通过减少主导滤波器的贡献来进一步提高准确性。这些策略共同加强了深度学习模型在森林砍伐分析中的稳健性。将深度学习技术与遥感应用相结合,是识别和监测森林砍伐的绝佳工具。这些领域之间的协同作用,通过所审查的模型得以体现,为保护宝贵的森林带来了希望。随着技术的进步,本综述中的见解将推动开发更准确、更高效、更易获得的毁林检测方法,为地球重要资源的可持续管理做出贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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