Study on Extraction Methods of Winter Wheat Area Based on GF-1 Satellite Images

J. Shan, Zhiming Wang, Ling Sun, Lin Qiu, Kun Yu, Jingjing Wang
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Abstract

Three GF-1 WFV images on March 16, 2014, April 9, 2014, and April 30, 2014 were selected to extract the planting area of winter wheat in Jianhu county of Jiangsu province. Vegetation indexes were extracted from the original spectrum data in order to extract winter wheat area with Maximum Likelihood Classifier (MLC), Support Vector Machine (SVM) and Classification and Regression Trees (CART). The extraction accuracy of wheat was verified through on-site GPS measurement of 5 ground samples area with the scale of 1km $\times$ 1km. The extraction accuracy of winter wheat area with SVM reached 84.138% on April 9 was the highest among three phases image. It indicated that the image on 9 April (booting stage) was the most suitable temporal for wheat identification. The GF-1 satellite image can be used for monitoring the cultivated area of wheat and it has higher accuracy and broad application prospects in the field of agriculture remote sensing monitoring.
基于GF-1卫星影像的冬小麦面积提取方法研究
选取2014年3月16日、2014年4月9日和2014年4月30日三幅GF-1 WFV影像提取江苏省建湖县冬小麦种植面积。利用最大似然分类器(MLC)、支持向量机(SVM)和分类回归树(CART)对原始光谱数据提取植被指数,提取冬小麦面积。通过5个地样区域的GPS现场测量,验证了小麦的提取精度,比例尺为1km $\ × $ 1km。4月9日支持向量机对冬小麦区域的提取准确率最高,达到84.138%。结果表明,4月9日(孕穗期)的影像是小麦识别的最佳时段。GF-1卫星影像可用于小麦耕地面积监测,在农业遥感监测领域具有较高的精度和广阔的应用前景。
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