Farmland Extraction from High Spatial Resolution Remote Sensing Images Based on Stratified Scale Pre-Estimation
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Lu Xu | Dongping Ming | Xiao Ling | Wen Zhou | Hanqing Bao | Yangyang Chen | Lu Xu | D. Ming | Yangyang Chen | Wen Zhou | Xiao Ling | Hanqing Bao
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