Multi-scale uncertainty evaluation of remote sensing image classification

Quanhua Zhao, Weidong Song, Y. Bao
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Abstract

Remote Sensing (RS) image classification is one of the most important ways to extract thematic information, which used broadly in many fields. More and more attention has been drawn on the data quality recently. It is crucial to assess uncertainty of RS image classification, but the methods used so far for this task cannot provide information fully and completely. Based on information theory and rough set theory, the paper proposed a multi-scale evaluation (MSE) method, which is based on pixel scale, feature type scale and whole image scale, to realize the uncertainty evaluation of classification. The result of TM RS image classification was experimented on its accuracy of evaluation. At the same time, the static visualization of multi-scale evaluation for three classified images was carried out. Test result shows that the uncertainty evaluation by the multi-scale method is convenient for users to understand the uncertainty of classified image on pixel scale, different feature type scale and whole image scale, and it is also useful for the application of classified image.
遥感影像分类的多尺度不确定度评定
遥感图像分类是提取主题信息的重要方法之一,在许多领域都有广泛的应用。近年来,数据质量问题越来越受到人们的关注。遥感图像分类的不确定度评估是遥感图像分类的关键,但目前使用的方法不能提供充分和完整的信息。基于信息理论和粗糙集理论,提出了一种基于像素尺度、特征类型尺度和整体图像尺度的多尺度评价方法,实现了分类的不确定性评价。对TM RS图像分类结果进行了精度评价实验。同时,对三种分类图像进行了多尺度评价的静态可视化。实验结果表明,采用多尺度方法进行不确定度评价,便于用户了解分类图像在像素尺度、不同特征类型尺度和整体尺度上的不确定度,对分类图像的应用也有一定的帮助。
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