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Estimating total area of paddy fields in Heilongjiang, China, around 2000 using Landsat thematic mapper/enhanced thematic mapper plus data

机译:利用Landsat专题映射器/增强专题映射器加上数据估算中国黑龙江省2000年左右的稻田总面积。

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摘要

Agricultural statistics are a fundamental reference for evaluating damage caused by natural disasters, estimating food supply and demand, and framing policies. A statistical table is usually prepared by an administrative district. Unfortunately, the Heilongjiang Statistical Yearbook of China was not completely prepared by such a district. Therefore, remote sensing technology is necessary for estimating the total area of agricultural lands in each administrative district. The test area is the Heilongjiang Province in China. The Landsat Thematic Mapper (TM) and Enhanced Thematic Mapper Plus (ETM+) data acquired during and immediately after the rice-planting season around 2000 (1999-2002) were used for the land-use/land-cover classification. All possible data during or immediately after the rice-planting season (from the beginning of June to the beginning of July) were selected so that paddy fields could be detected accurately. Borders of prefecture-level cities were generated using borders of cities and prefectures derived from the Digital Map Database of China 1:1,000,000 International Version. The TM/ETM+ data with bands 3, 4 and 5 (red, near infrared and middle infrared, respectively) were prepared for the land-use/land-cover classification. These data were classified by the unsupervised method Iterative Self-Organizing Data Analysis Technique. Land-cover classes were identified and reclassified into 12 classes, i.e., submerged paddy fields, overgrown paddy fields, bare dry cropland, overgrown dry cropland, bare ground, grassland, woodland, wetland, water, built-up, shade and shadow, and clouds. Some scenes including clearly misclassified paddy fields were image-processed or reclassified to reduce misclassification. The accuracy of detecting paddy fields was estimated to be in the range of 86.2-94.6%. The area of paddy fields in Heilongjiang Province was estimated to be 19.4x10(3) km(2) and overestimated by 17.7% for the Heilongjiang Statistical Yearbook.
机译:农业统计数据是评估自然灾害造成的破坏,估计粮食供求和制定政策的基本参考。统计表通常由行政区准备。不幸的是,《中国黑龙江统计年鉴》并没有完全由这样的地区编写。因此,需要遥感技术来估计每个行政区的农业用地总面积。测试区域是中国的黑龙江省。在2000年左右(1999-2002年)水稻种植季节期间和之后获得的Landsat专题测绘仪(TM)和增强型专题测绘仪Plus(ETM +)数据用于土地利用/土地覆盖分类。选择了水稻种植季节期间或之后(从6月初到7月初)的所有可能数据,以便可以准确检测稻田。地级市的边界是使用从中国1:1,000,000国际版数字地图数据库中得出的市县地界来生成的。准备了具有波段3、4和5(分别为红色,近红外和中红外)的TM / ETM +数据,用于土地利用/土地覆盖分类。这些数据通过无监督方法“迭代自组织数据分析技术”进行分类。确定了土地覆盖类别并将其重新分类为12类,即淹没的稻田,水草丛生的稻田,裸露的旱地,杂草丛生的旱地,裸露的地面,草地,林地,湿地,水,建筑物,阴影和阴影,以及云。对某些场景(包括明显错误分类的稻田)进行了图像处理或重新分类,以减少错误分类。估计稻田探测的准确性在86.2-94.6%的范围内。黑龙江省的稻田面积估计为19.4x10(3)km(2),《黑龙江统计年鉴》估计高出17.7%。

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  • 来源
    《Remote sensing letters》 |2016年第6期|533-540|共8页
  • 作者单位

    Natl Inst Agroenvironm Sci, Ecosyst Informat Div, Tsukuba, Japan;

    Univ Tokyo, Grad Sch Agr & Life Sci, Dept Global Agr Sci, Tokyo, Japan;

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