Comparison of regional monitoring methods for grassland degradation based on remote sensing images

Haoran Wang, Tianyun Xue, Zhaoran Wang, Xiangyu Bai
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Abstract

As an integral part of the ecosystem, grassland plays an important role in protecting water and soil, preventing wind and fixing sand and protecting biodiversity. However, some grasslands are degraded at this stage, so a grassland monitoring method is urgently needed to prevent desertification from spreading. With the rapid rise of deep learning, it is more and more popular to apply artificial intelligence methods to grassland degradation monitoring. This paper systematically and comprehensively analyzes that almost all semantic segmentation methods have been applied to relevant research on grassland degradation areas since semantic segmentation methods were applied to grassland monitoring. Then, according to the different algorithm structures of grassland extraction methods, the principles of representative algorithms are introduced in turn. Then we made a statistical analysis of the publication status, research space distribution and the number of citations of papers in this field. Finally, the analysis results are discussed, and the possible research hotspots in the future are discussed.
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基于遥感影像的草地退化区域监测方法比较
草地是生态系统的重要组成部分,在保水、保土、防风固沙、保护生物多样性等方面发挥着重要作用。然而,在这一阶段,一些草原正在退化,因此迫切需要一种草地监测方法来防止荒漠化的蔓延。随着深度学习的迅速兴起,将人工智能方法应用于草地退化监测越来越受欢迎。本文系统、全面地分析了自语义分割方法应用于草地监测以来,几乎所有的语义分割方法都应用于草地退化区的相关研究。然后,根据草地提取方法的算法结构不同,依次介绍了代表性算法的原理。然后对该领域的论文发表现状、研究空间分布和被引次数进行了统计分析。最后对分析结果进行了讨论,并对未来可能的研究热点进行了讨论。
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