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Farmland Use Mapping Using High Resolution Images and Land Use Change Analysis
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 Title & Authors
Farmland Use Mapping Using High Resolution Images and Land Use Change Analysis
Lee, Kyungdo; Hong, Sukyoung; Kim, Yihyun;
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This study aims to make a "farmland use map" using high-resolution images and to analyze the land use change for about 8 years in Goyang, Namyangju, and Yongin cities. We have made a new numerical map named as a farmland use map using high-resolution images taken mostly in 2007 and digital topographical maps in Goyang, Namyangju, and Yongin cities near metropolitan areas to classify farmland use of paddy, upland, plastic film house, and orchard. We also made a land use map by overlaying the farmland use map and the land registration map of each city made in 2007, and compared the land use map made by RDA (Rural Development Administration) in 1999. Paddy areas decreased at a range of 3,000 to 5,000 ha during 8 years and were changed to residential areas in the cities. Upland and orchard areas also showed similar tendency and were changed to residential areas as well. On the other hand, the areas of the plastic film houses in the cities showed an increase or same in size. It is suggested that farmland use map can be broadly used as a base map for various survey projects including soil survey, statistics, and farmland information management.
Farmland use mapping;Land use change;High-resolution image;
 Cited by
시계열 식생지수와 과거 작물 재배 패턴을 이용한 대규모 작물 분류도의 조기 제작 - 미국 아이오와 주 사례연구 -,김예슬;박노욱;홍석영;이경도;유희영;

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