越南城市分类不同遥感影像重采样方法比较

P. T. Dung, Man Duc Chuc, N. T. Thanh, Bui Quang Hung, D. M. Chung
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引用次数: 2

摘要

城市分类遥感数据在数据类型、采集时间和空间分辨率等方面存在很大差异。因此,需要对输入数据进行预处理,其中必须通过不同的重采样方法改变空间分辨率。然而,重采样过程中的数据转换对分类结果有很多影响。本研究对重采样方法进行了评价。结果表明,均值聚集法和双三次插值法在多种数据类型上都优于其他方法。城市分类地图的最高总体准确率为98.47%,F1得分为0.9842。DOI: 10.32913 / rd-ict.vol2.no15.663
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Comparison of Resampling Methods on Different Remote Sensing Images for Vietnam’s Urban Classification
Remotely-sensed data for urban classification is very diverse in data type, acquisition time, and spatial resolution. Therefore, preprocessing is needed for input data, in which the spatial resolution must be changed by different resampling methods. However, data transformations during resampling have many effects on classification results. In this research, resampling methods were evaluated. The results showed that mean aggregation and bicubic interpolation methods performed better than the rest on a variety of data types. Besides, the highest overall accuracy and the F1 score for urban classification maps were 98.47% and 0.9842, respectively. DOI: 10.32913/rd-ict.vol2.no15.663
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