首页|Findings from Capital Normal University Update Understanding of Machine Learning (Improving Grassland Classification Accuracy Using Optimal Spectral-phenological-topographic Features In Combination With Machine Learning Algorithm)

Findings from Capital Normal University Update Understanding of Machine Learning (Improving Grassland Classification Accuracy Using Optimal Spectral-phenological-topographic Features In Combination With Machine Learning Algorithm)

扫码查看
Investigators publish new report on Machine Learning. According to news reporting out of Beijing, People's Republic of China, by NewsRx editors, research stated, "Accurate mapping of large-scale grassland types is important for grassland and water resources management. The similarity of spectral characteristics between grassland types lowers the classification accuracy of different grassland types." Financial support for this research came from National Natural Science Foundation of China (NSFC). Our news journalists obtained a quote from the research from Capital Normal University, "To improve the classification accuracy of large-scale grasslands, this study proposed a new framework which integrates Sentinel-2 images with DEM and climate zones data. In this framework, optimal spectral-phenologicaltopographic features are fed into Random Forest (RF) model based on Google Earth Engine (GEE) platform. The proposed framework was applied in Inner Mongolia, China. A grassland map of the region was obtained with an overall accuracy (OA) exceeding 80 %, which is higher than the OA (60 %-70 %) of current largescale grassland type classification studies. In WIM (Western Inner Mongolia) and NEIM (Northeast Inner Mongolia), the OA reaches 96.97 % and 95.85 %, respectively. SWIR2 band and elevation have a clear advantage in distinguishing different grassland types. Compared to 1980s, the area of temperate meadow steppe (TMS) and temperate desert steppe (TDS) have increased by 111.94 % and 126.00 %, respectively."

BeijingPeople's Republic of ChinaAsiaAlgorithmsCyborgsEmerging TechnologiesMachine LearningCapital Normal University

2024

Robotics & Machine Learning Daily News

Robotics & Machine Learning Daily News

ISSN:
年,卷(期):2024.(Feb.12)
  • 62