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Investigating the capability of multi-temporal Landsat images for crop identification in high farmland fragmentation regions

机译:研究多时相Landsat影像在高农田分割区中作物识别的能力

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Crop identification is a critical component for grain production prediction. Identifying crop type using remote sensing techniques has been investigated for many decades. A number of different supervised methods have been developed to discriminate different crops. However, most of these methods were applied to areas with relatively large cultivated fields. In China, the cultivation policy leads to extreme complexity in the agricultural landscape, especially in summer and autumn seasons. The objective of this study was to investigate the capability of multi-temporal Landsat images for crop identification in a region with high farmland fragmentation. The study area is located in Taigu, Shanxi province, where the crop planting structure is very complicated. A total of 7 Landsat Enhanced Thematic Mapper Plus (ETM+) images were acquired from 14 October 2003 to 26 June 2004 for classification. Two most favorable classifiers, support vector machine (SVM) and maximum likelihood classifier (MLC) were selected for classification with training samples using different combinations of multi-temporal Landsat images. The overall classification accuracy and Kappa statistics estimated from the confusion matrix using validation samples were selected for evaluating all classification results. Accuracy assessment results indicated that multi-temporal ETM+ data achieved satisfactory classification accuracy (best overall accuracy 89.61%) in the study area. SVM classifier performed better than MLC when three or less Landsat images were used. The addition of the temporal dimension further increased the overall classification accuracy for both SVM and MLC, but the accuracy increased slightly for SVM classifier. The time of data acquisitions are of great importance for crop classification. Results in this paper indicated that multitemporal Landsat ETM+ data are capable for crop discrimination in regions with high farmland fragmentation. In the future, the use of Chin- Environment Satellite HJ-1A/B data for this application should be investigated in the future for the higher temporal resolution and greater spatial coverage.
机译:作物鉴定是谷物产量预测的关键组成部分。使用遥感技术识别农作物类型已经研究了数十年。已经开发出许多不同的监督方法来区分不同的农作物。但是,这些方法大多数都应用于耕地面积较大的地区。在中国,耕种政策导致农业景观极端复杂,尤其是在夏季和秋季。这项研究的目的是调查多时相Landsat影像在农田高度破碎化地区识别作物的能力。研究区域位于山西省太谷市,那里的农作物种植结构非常复杂。从2003年10月14日至2004年6月26日,共采集了7张Landsat增强主题地图制作工具(ETM +)图像进行分类。选择了两个最有利的分类器,即支持向量机(SVM)和最大似然分类器(MLC),以使用多时态Landsat图像的不同组合对训练样本进行分类。选择总体分类准确度和使用验证样本从混淆矩阵估算的Kapp统计量,以评估所有分类结果。准确性评估结果表明,多时域ETM +数据在研究区域中达到了令人满意的分类准确性(最佳总体准确性为89.61%)。当使用三个或更少的Landsat图像时,SVM分类器的性能优于MLC。时间维的添加进一步提高了SVM和MLC的总体分类精度,但SVM分类器的精度略有提高。数据采集​​的时间对于作物分类非常重要。本文的结果表明,多时相Landsat ETM +数据能够在农田高度分割的地区进行作物歧视。将来,应在将来针对这种应用使用Chin环境卫星HJ-1A / B数据进行研究,以获得更高的时间分辨率和更大的空间覆盖范围。

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