A machine learning method for Arctic lakes detection in the permafrost areas of Siberia

被引:5
作者
Janiec, Piotr [1 ]
Nowosad, Jakub [1 ]
Zwolinski, Zbigniew [1 ]
机构
[1] Adam Mickiewicz Univ, Inst Geoecol & Geoinformat, Poznan, Poland
关键词
Thermokarst lakes; subpolar areas; Landsat; MERIT DEM; supervised classification; Siberia; SURFACE-WATER CHANGE; THERMOKARST LAKES; IMAGE CLASSIFICATION; RANDOM FORESTS; INDEX NDWI; EXTRACTION; PERFORMANCES; VALIDATION; REGRESSION; LANDSCAPES;
D O I
10.1080/22797254.2022.2163923
中图分类号
TP7 [遥感技术];
学科分类号
081102 ; 0816 ; 081602 ; 083002 ; 1404 ;
摘要
Thermokarst lakes are the main components of the vast Arctic and subarctic landscapes. These lakes can serve as geoindicators of permafrost degradation; therefore, proper lake distribution assessment methods are necessary. In this study, we compared four machine learning methods to improve existing lake detection systems. The northern part of Yakutia was selected as the study area owing to its complex environment. We used data from Landsat 8 and spectral indices to take into account the spectral characteristics of the lakes, and MERIT DEM data to take into account the topography. The lowest accuracy was found for the classification and regression trees (CART) method (overall accuracy = 81%). On the other hand, the random forests (RF) classification provided the best results (overall accuracy = 92%), and only this classification coped well in all problematic areas, such as shaded and humid areas, near steep slopes, burn scars, and rivers. The altitude and bands SWIR1 (Short wave infrared 1), SWIR2 (Short wave infrared 2), and Green were the most important. Spectral indices did not have significant impact on the classification results in the specific conditions of the thermokarst lakes environment. 17,700 lakes were identified with the total area of 271.43 km(2).
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页数:18
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