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U-Net Convolutional Networks for Mining Land Cover Classification Based on High-Resolution UAV Imagery

Tuan Linh Giang, Kinh Bac Dang, Quang Toan Le, Vu Giang Nguyen, Si Son Tong, Van‐Manh Pham

2020IEEE Access90 citationsDOIOpen Access PDF

Abstract

Mining activities are the leading cause of deforestation, land-use changes, and pollution. Land use/cover mapping in Vietnam every five years is not useful to monitor land covers in mining areas, especially in the Central Highland region. It is necessary to equip managers with a better tool to monitor and map land cover using high-resolution images. Therefore, the authors proposed using the U-Net convolutional network for land-cover classification based on multispectral Unmanned aerial vehicle (UAV) image in a mining area of Daknong province, Vietnam. An area of 0.5kmx0.8km was used for training and testing seven U-Net models using seven optimizer function types. The final U-Net model can interpret six land cover types: (1) open-case mining lands, (2) old permanent croplands, (3) young permanent croplands, (4) grasslands, (5) bare soils, (6) water bodies. As a result, two models using Nadam and Adadelta optimizer function can be used to classify six land cover types with accuracy higher than 83%, especially in open-case mining lands and polluted streams flowed out from the mining areas. The trained U-Net models can potentially update new land cover types in other mining areas towards monitoring land cover changes in real-time in the future.

Topics & Concepts

Land coverDeforestation (computer science)Remote sensingMultispectral imageSatellite imageryLand useCover (algebra)Environmental scienceComputer scienceGeographyEngineeringProgramming languageCivil engineeringMechanical engineeringRemote-Sensing Image ClassificationAdvanced Image Fusion TechniquesGeochemistry and Geologic Mapping
U-Net Convolutional Networks for Mining Land Cover Classification Based on High-Resolution UAV Imagery | Litcius