Assessing of land cover classification methods for Ha Giang province using Sentinel-2 satellite imagery
Keywords:
Landcover, Sentinel-2, Land-use Maximum Likelihood Classifier algorithm, Support Vector Machine algorithm.
Abstract
The study aims to compare the classification accuracy of vegetation cover in Hà Giang province using Sentinel-2 satellite imagery 2024 through two classification methods: Support Vector Machine (SVM) and Maximum Likelihood Classification (MLC). A comparison of the two methods showed that SVM (OA = 83,59%, K = 0,815) exhibited superior accuracy compared to MLC (OA = 78,36%, K = 0,756) when classifying vegetation cover using Sentinel-2 satellite imagery. The classification results for Hà Giang province in 2024, with 9 vegetation cover types, indicated that the majority of the area is forest land, followed by agricultural land (annual crops and perennial crops), bare land, residential land, and finally water bodies.
điểm /
đánh giá
Published
2025-02-28
Section
Bài viết