JAXA’s new high-resolution land use land cover map for Vietnam using a time-feature convolutional neural network

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作者
Van Thinh Truong
Sota Hirayama
Duong Cao Phan
Thanh Tung Hoang
Takeo Tadono
Kenlo Nishida Nasahara
机构
[1] University of Tsukuba,Degree Programs in Life and Earth Sciences, Graduate School of Science and Technology
[2] Japan Aerospace Exploration Agency (JAXA),Earth Observation Research Center (EORC)
[3] University College Dublin,Ireland’s Centre For Applied AI, School of Computer Science
[4] Hydraulic Construction Institute,Faculty of Life and Environmental Sciences
[5] Vietnam Academy for Water Resources,undefined
[6] Faculty of International Studies,undefined
[7] Hanoi University,undefined
[8] University of Tsukuba,undefined
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摘要
Land use land cover (LULC) maps are crucial for various applications, such as disaster management, natural resource conservation, biodiversity evaluation, climate modeling, etc. The Japan Aerospace Exploration Agency (JAXA) has released several high-resolution LULC maps for national and regional scales. Vietnam, due to its rich biodiversity and cultural diversity, is a target country for the production of high-resolution LULC maps. This study introduces a high-resolution and high-accuracy LULC map for Vietnam, utilizing a CNN approach that performs convolution over a time-feature domain instead of the typical geospatial domain employed by conventional CNNs. By using multi-temporal data spanning 6 seasons, the produced LULC map achieved a high overall accuracy of 90.5% ± 1.2%, surpassing other 10-meter LULC maps for Vietnam in terms of accuracy and/or the ability to capture detailed features. In addition, a straightforward and practical approach was proposed for generating cloud-free multi-temporal Sentinel-2 images, particularly suitable for cloudy regions. This study marks the first implementation of the time-feature CNN approach for the creation of a high-accuracy LULC map in a tropical cloudy country.
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