首页> 外文期刊>International journal of applied earth observation and geoinformation >Mapping cropland extent of Southeast and Northeast Asia using multi-year time-series Landsat 30-m data using a random forest classifier on the Google Earth Engine Cloud
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Mapping cropland extent of Southeast and Northeast Asia using multi-year time-series Landsat 30-m data using a random forest classifier on the Google Earth Engine Cloud

机译:在Google地球发动机云上使用多年时间系列Landsat 30-M数据映射东南和东北亚的农作物范围

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Cropland extent maps are useful components for assessing food security. Ideally, such products are a useful addition to countrywide agricultural statistics since they are not politically biased and can be used to calculate cropland area for any spatial unit from an individual farm to various administrative unites (e.g., state, county, district) within and across nations, which in turn can be used to estimate agricultural productivity as well as degree of disturbance on food security from natural disasters and political conflict. However, existing cropland extent maps over large areas (e.g., Country, region, continent, world) are derived from coarse resolution imagery (250 m to 1 km pixels) and have many limitations such as missing fragmented andor small farms with mixed signatures from different crop types andor farming practices that can be, confused with other land cover. As a result, the coarse resolution maps have limited useflness in areas where fields are small ( < 1 ha), such as in Southeast Asia. Furthermore, coarse resolution cropland maps have known uncertainties in both geo-precision of cropland location as well as accuracies of the product. To overcome these limitations, this research was conducted using multi-date, multi-year 30-m Landsat time-series data for 3 years chosen from 2013 to 2016 for all Southeast and Northeast Asian Countries (SNACs), which included 7 refined agro-ecological zones (RAEZ) and 12 countries (Indonesia, Thailand, Myanmar, Vietnam, Malaysia, Philippines, Cambodia, Japan, North Korea, Laos, South Korea, and Brunei). The 30-m (1 pixel = 0.09 ha) data from Landsat 8 Operational Land Imager (OLI) and Landsat 7 Enhanced Thematic Mapper (ETM + ) were used in the study. Ten Landsat bands were used in the analysis (blue, green, red, NIR, SWIR1 SWIR2, Thermal, NDVI, NDWI, LSWI) along with additional layers of standard deviation of these 10 bands across 1 year, and global digital elevation model (GDEM)-derived slope and elevation bands. To reduce the impact of clouds, the Landsat imagery was time-composited over four time-periods (Period 1: January- April, Period 2: May-August, and Period 3: September-December) over 3-years. Period 4 was the standard deviation of all 10 bands taken over all images acquired during the 2015 calendar year. These four period composites, totaling 42 band data-cube, were generated for each of the 7 RAEZs. The reference training data (N = 7849) generated for the 7 RAEZ using sub-meter to 5-m very high spatial resolution imagery (VHRI) helped generate the knowledge-base to separate croplands from non-croplands. This knowledge-base was used to code and run a pixel-based random forest (RF) supervised machine learning algorithm on the Google Earth Engine (GEE) cloud computing environment to separate croplands from non-croplands. The resulting cropland extent products were evaluated using an independent reference validation dataset (N = 1750) in each of the 7 RAEZs as well as for the entire SNAC area. For the entire SNAC area, the overall accuracy was 88.1% with a producer's accuracy of 81.6% (errors of omissions = 18.4%) and user's accuracy of 76.7% (errors of commissions = 23.3%). For each of the 7 RAEZs overall accuracies varied from 83.2 to 96.4%. Cropland areas calculated for the 12 countries were compared with country areas reported by the United Nations Food and Agriculture Organization and other national cropland statistics resulting in an R-2 value of 0.93.
机译:农作物范围地图是评估粮食安全的有用组件。理想情况下,这种产品是全国农业统计的有用的补充,因为它们在政治上没有偏见,可用于计算任何空间单位的农田地区,从个体农场到各个行政统一(例如,州,县,区)内部国家又可以用于估计农业生产力以及对自然灾害和政治冲突的粮食安全的干扰程度。然而,现有的农田范围地图(例如,国家,地区,大陆,世界)源于粗糙分辨率图像(250米至1公里像素),并且具有许多限制,例如丢失碎片和或小农场,具有混合签名来自不同的作物类型和或农业实践,可以与其他陆地覆盖混淆。结果,粗略分辨率映射在田地小(<1公顷)的区域中具有有限的使用者,例如在东南亚。此外,粗糙分辨率裁剪地图在农田地点的地理精度以及产品的准确性方面具有知名的不确定性。为了克服这些限制,这项研究是使用多日期的多年来30-MANDSAT时间序列数据进行3年,为2013年至2016年为所有东南和东北亚国家(SNACS)选择,其中包括7个精制农业 - 生态区(RAEZ)和12个国家(印度尼西亚,泰国,缅甸,越南,马来西亚,菲律宾,柬埔寨,日本,朝鲜,老挝,韩国和文莱)。研究中使用了来自Landsat 8运行陆地成像器(OLI)和Landsat 7增强专题映射器(ETM +)的30-M(1像素= 0.09公顷)数据。在分析(蓝色,绿色,红色,NIR,SWIR1 SWIR1,Thermal,NDVI,NDWI,LSWI)以及跨越1年和全球数字海拔模型(GDEM )长长的斜坡和海拔带。为了减少云的影响,Landsat意象在四个时间(1月1日:1月份,2月2日)超过3年的时间上有时间合成(第1期:1月2日星期六:9月至12月)。第4期是在2015年日历年度收购的所有图像上采取的所有10个频段的标准偏差。这四个时期复合材料总计42频段数据 - 立方体被为7个REEZ中的每一个生成。使用子仪表到5-M非常高空间分辨率图像(VHRI)为7 RAEZ生成的参考培训数据(n = 7849)有助于为从非裁剪群体分离农田的知识库。该知识库用于编码并运行基于像素的随机森林(RF)监督机器学习算法(GEE)云计算环境,以将农田与非裁剪分开。在7 reezs中的每一个以及整个SNAC区域中使用独立的参考验证数据集(n = 1750)评估所产生的农作物范围产品。对于整个SNAC地区,整体准确性为88.1%,生产者的准确性为81.6%(遗漏误差= 18.4%),用户的准确性为76.7%(佣金错误= 23.3%)。对于7个REZS中的每一个,总体精度从83.2变化到96.4%。与联合国粮食和农业组织和其他国家农田统计数据报告的国家地区相比,为12个国家计算的农田地区与统计值为0.93的r-2值。

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