Landsat-8 (OLI) classification method based on tasseled cap transformation features

S. M. Ali, S. Salman
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引用次数: 1

Abstract

The expected increase in world population requires a redoubling of efforts to increase agricultural yields including rice crop which is the main food of many countries of the world and in particular the countries of the Middle East. Therefore, estimating the size of the agricultural yield should be one of the first tasks of governments in the promotion of research to achieve food security and to study the obstacles resulting from environmental degradation. The Vegetation Indices (VIs) and the Tasseled Cap Transformation (TCT) features are particularly used to evaluate the presence and condition of vegetation, using satellite images. In this paper, new classification will introduced to harness these features to calculate the acreage of rice and compare them with the declared areas by the Ministry of Agriculture to make sure of their precisions. Typically, rice cultivation begins in the study area (Najaf Province) in mid-June and up to the top of the vegetative phase after 3 to 3.5 months (i.e. between September and October), then up to the harvest stage in thirty days (i.e. November). So, the present research will use Landsat-8 (Operational Land Imager OLI) images captured in September for the years 2013 and 2014 to ensure the validity of measurements. Among the many algorithms which have been developed for monitoring the biophysical characteristics of vegetation, only two of the six features of TCT (i.e. Brightness and Greenness have been adopted to use because they spectrally behave similarly like the Red and Infrared bands of the OLI images.
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基于流苏帽变换特征的Landsat-8 (OLI)分类方法
预期的世界人口增加要求加倍努力提高农业产量,包括作为世界上许多国家,特别是中东国家的主要粮食的水稻作物。因此,估计农业产量的大小应该是政府在促进研究以实现粮食安全和研究环境退化造成的障碍时的首要任务之一。植被指数(VIs)和流苏帽变换(TCT)特征特别用于利用卫星图像评估植被的存在和状况。本文将引入新的分类方法,利用这些特征来计算水稻种植面积,并与农业部公布的面积进行比较,以确保其精度。通常,研究地区(纳杰夫省)的水稻种植始于6月中旬,3至3.5个月后(即9月至10月之间)进入营养阶段的顶端,然后在30天内(即11月)进入收获阶段。因此,本研究将使用2013年和2014年9月拍摄的Landsat-8 (Operational Land Imager OLI)图像来确保测量的有效性。在已经开发的用于监测植被生物物理特征的许多算法中,由于TCT的六个特征(即亮度和绿色)在光谱上的行为与OLI图像的红色和红外波段相似,因此只有两个特征(即亮度和绿色)被采用。
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