Identification and factor analysis of rocky desertification severity levels in large-scale karst areas based on deep learning image segmentation

IF 7 2区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES Ecological Indicators Pub Date : 2024-09-14 DOI:10.1016/j.ecolind.2024.112565
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Abstract

Land rocky desertification (RD) is one of the most serious environmental disasters in karst landforms. Identifying the rocky desertification severity level (RDSL) is a key task in the prevention and control projects of rocky desertification in karst areas. How to efficiently and accurately identify the RDSL is an urgent issue. It requires higher accuracy and more advanced techniques. Currently, machine learning-based remote sensing technology (RST) faces challenges in identifying the RDSL, including insufficient dataset features, low accuracy of identification models, and incomplete exploration of rocky desertification driving factors. To address these issues, this study leverages multi-source remote sensing satellite data and related product data to construct a multidimensional dataset with feature factors. By combining convolutional neural networks (CNN) and graph neural networks (GNN), a graph convolutional network segmentation model based on deep learning image segmentation is proposed for the automatic identification of RDSL. In addition, the study has investigated the spatiotemporal changes of RD in Guizhou Province in recent years and explored the impacts of various natural driving factors on the RDSLs. The experimental results indicate that the multidimensional feature dataset (Dataset-2) contributes to enhancing the identification accuracy of the model. The proposed model has capabilities such as composite representation in non-Euclidean space, deep extraction of image semantics, and multiscale segmentation and fusion. The model achieves an Mean Intersection over Union (MIoU) of 84.724, which outperforms other mainstream image segmentation methods. Although rocky desertification from 2015 to 2022 in Guizhou Province is significantly distributed, there is a trend toward mitigation. This study provides effective technical tools and data support for exploring the evolution process of desertification in subtropical karst areas, as well as for the implementation of projects related to environmental protection, afforestation, soil and water conservation, and land monitoring.

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基于深度学习图像分割的大尺度岩溶地区石漠化严重程度识别与因子分析
土地石漠化(RD)是岩溶地貌最严重的环境灾害之一。确定石漠化严重程度(RDSL)是岩溶地区石漠化防治工程的关键任务。如何高效、准确地识别 RDSL 是一个亟待解决的问题。这需要更高的精度和更先进的技术。目前,基于机器学习的遥感技术(RST)在识别RDSL方面面临着数据集特征不足、识别模型准确率低、石漠化驱动因素探索不全面等挑战。为解决这些问题,本研究利用多源遥感卫星数据和相关产品数据,构建了具有特征因子的多维数据集。通过结合卷积神经网络(CNN)和图神经网络(GNN),提出了基于深度学习图像分割的图卷积网络分割模型,用于 RDSL 的自动识别。此外,研究还考察了贵州省近年来 RD 的时空变化,探讨了各种自然驱动因素对 RDSL 的影响。实验结果表明,多维特征数据集(数据集-2)有助于提高模型的识别精度。所提出的模型具有非欧几里得空间复合表示、图像语义深度提取、多尺度分割和融合等功能。该模型的平均交集大于联合(MIoU)达到84.724,优于其他主流图像分割方法。虽然从2015年到2022年贵州省石漠化分布明显,但有缓解的趋势。该研究为探索亚热带岩溶地区石漠化演变过程,以及环境保护、植树造林、水土保持、土地监测等相关项目的实施提供了有效的技术手段和数据支持。
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来源期刊
Ecological Indicators
Ecological Indicators 环境科学-环境科学
CiteScore
11.80
自引率
8.70%
发文量
1163
审稿时长
78 days
期刊介绍: The ultimate aim of Ecological Indicators is to integrate the monitoring and assessment of ecological and environmental indicators with management practices. The journal provides a forum for the discussion of the applied scientific development and review of traditional indicator approaches as well as for theoretical, modelling and quantitative applications such as index development. Research into the following areas will be published. • All aspects of ecological and environmental indicators and indices. • New indicators, and new approaches and methods for indicator development, testing and use. • Development and modelling of indices, e.g. application of indicator suites across multiple scales and resources. • Analysis and research of resource, system- and scale-specific indicators. • Methods for integration of social and other valuation metrics for the production of scientifically rigorous and politically-relevant assessments using indicator-based monitoring and assessment programs. • How research indicators can be transformed into direct application for management purposes. • Broader assessment objectives and methods, e.g. biodiversity, biological integrity, and sustainability, through the use of indicators. • Resource-specific indicators such as landscape, agroecosystems, forests, wetlands, etc.
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