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A Method to Improve the Accuracy of Remote Sensing Data Classification by Exploiting the Multi-Scale Properties in the Scene

机译:利用场景中多尺度属性提高遥感数据分类精度的方法

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Land use mapping is one of the major applications of remote sensing. While most studies focus on the advanced remote sensing thematic classification algorithms for land use mapping,the scale factor in remote sensing data classification was less recognized. Previous studies showed that while the multi-scale characteristics exist in the remotely sensed data for land use classification,some classes are mostly accurately classified at a finer resolution,and others at coarser ones. Thus,it is helpful to improve the overall classification accuracy by mapping different land use classes at different scales. In this paper,a framework for improving the land use classification accuracy by exploiting the multi-scale properties of remotely sensed data is presented. Firstly,the remotely sensed data at original fine resolution was up-scaled to different coarser resolutions; Secondly,the up-scaled data were classified by independently trained Maximum Likelihood Classifier at every resolution,and the corresponding a Posteriori Probability of MLC classification was saved; Thirdly,the classification results at different resolutions were integrated by comparing the a Posteriori Probability of classification at every resolution. The final class of pixel was labeled as the class that has the maximum a Posteriori Probability. A case study on the land use mapping using Landsat TM data using this framework was conducted in the Dianchi Watershed in Yunnan Province of China. The land use was categorized into 6 classes. The classification accuracy was assessed using the Confusion Matrix. Comparison between the classification accuracy at multi-scale and that at original resolution showed an improvement of overall classification accuracy by about 10%. The study showed that by exploiting the multi-scale properties in the remotely sensed data,the accuracy the land use mapping can be improved significantly.
机译:土地利用制图是遥感的主要应用之一。虽然大多数研究都集中在用于土地利用制图的先进遥感专题分类算法上,但对遥感数据分类中的比例因子却鲜为人知。先前的研究表明,尽管遥感数据中存在土地用途分类的多尺度特征,但某些类别大多以较高分辨率进行准确分类,而另一些类别则采用较粗分辨率进行分类。因此,通过绘制不同规模的不同土地利用类别,有助于提高总体分类的准确性。本文提出了一种利用遥感数据的多尺度特性来提高土地利用分类准确性的框架。首先,将原始分辨率下的遥感数据按比例放大到不同的粗糙分辨率。其次,通过独立训练的最大似然分类器在各个分辨率下对放大后的数据进行分类,并保存了相应的MLC分类的后验概率;第三,通过比较每种分辨率下的分类后验概率,对不同分辨率下的分类结果进行积分。像素的最终类别被标记为具有最大后验概率的类别。在中国云南省滇池流域,利用Landsat TM数据利用该框架进行了土地利用制图的案例研究。土地使用分为6类。使用混淆矩阵评估分类准确性。多尺度分类精度与原始分辨率下的分类精度比较表明,整体分类精度提高了约10%。研究表明,通过利用遥感数据的多尺度特性,可以大大提高土地利用图的准确性。

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