The superiority of the Adjusted Normalized Difference Snow Index (ANDSI) for mapping glaciers using Sentinel-2 multispectral satellite imagery

IF 6 2区 地球科学 Q1 GEOGRAPHY, PHYSICAL
Babak Mohammadi, Petter Pilesjö, Zheng Duan
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Abstract

Accurate monitoring of glaciers’ extents and their dynamics is essential for improving our understanding of the impacts of climate and environmental changes in cold regions. The satellite-based Normalized Difference Snow Index (NDSI) has been widely used for mapping snow cover and glaciers around the globe. However, mapping glaciers in snow-covered areas using existing indices remains a challenging task due to their incapabilities in separating snow, glaciers, and water. This study aimed to evaluate a new satellite-based index and apply machine learning algorithms to improve the accuracy of mapping glaciers. A new index based on satellite data from Sentinel-2 was tested, which we call the Adjusted Normalized Difference Snow Index (ANDSI). ANDSI (besides NDSI) was used with five different machine learning algorithms, namely Artificial Neural Network, C5.0 Decision Tree Algorithm, Naive Bayes classifier, Support Vector Machine, and Extreme Gradient Boosting, to map glaciers, and their performance was evaluated against ground reference data. Four glacierized regions in different countries (Canada, China, Sweden, and Switzerland-Italy) were selected as study sites to evaluate the performance of the proposed ANDSI. Results showed that the proposed ANDSI outperformed the original NDSI, and the C5.0 classifier showed the best overall accuracy and Kappa among the selected five machine learning classifiers in the majority of cases. The original NDSI yielded results with an average overall accuracy of (around) 91% and the proposed ANDSI with (around) 95% for glacier mapping across all models and study regions. This study demonstrates that the proposed ANDSI serves as a superior and improved method for accurately mapping glaciers in cold regions.
调整归一化积雪指数(ANDSI)在Sentinel-2多光谱卫星影像冰川制图中的优势
对冰川范围及其动态的精确监测对于提高我们对寒冷地区气候和环境变化影响的理解至关重要。基于卫星的归一化积雪指数(NDSI)已在全球范围内广泛应用于积雪和冰川制图。然而,利用现有指数绘制冰雪覆盖地区的冰川地图仍然是一项具有挑战性的任务,因为它们无法将雪、冰川和水分离开来。本研究旨在评估一种新的基于卫星的指数,并应用机器学习算法来提高冰川制图的准确性。我们测试了一个基于Sentinel-2卫星数据的新指数,我们称之为调整归一化积雪指数(ANDSI)。将ANDSI(除NDSI外)与人工神经网络、C5.0决策树算法、朴素贝叶斯分类器、支持向量机和极端梯度增强五种不同的机器学习算法一起用于绘制冰川,并根据地面参考数据对其性能进行了评估。四个不同国家的冰川地区(加拿大、中国、瑞典和瑞士-意大利)被选为研究地点,以评估拟议的ANDSI的性能。结果表明,所提出的ANDSI优于原始NDSI,在大多数情况下,C5.0分类器在所选的5个机器学习分类器中显示出最好的整体准确率和Kappa。对于所有模型和研究区域的冰川测绘,原始NDSI的平均总体精度约为91%,而拟议的ANDSI的平均总体精度约为95%。研究结果表明,所提出的ANDSI方法是一种较好的、改进的寒区冰川精确测绘方法。
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来源期刊
CiteScore
11.20
自引率
9.00%
发文量
84
审稿时长
6 months
期刊介绍: GIScience & Remote Sensing publishes original, peer-reviewed articles associated with geographic information systems (GIS), remote sensing of the environment (including digital image processing), geocomputation, spatial data mining, and geographic environmental modelling. Papers reflecting both basic and applied research are published.
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