Object-oriented remote sensing imagery classification accuracy assessment based on confusion matrix

Lina Yi, Guifeng Zhang
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引用次数: 10

Abstract

This paper designs an object-based confusion matrix (OCM) classification accuracy assessment scheme to accurately estimate the overall and individual category classification accuracy. The estimation protocol and the sample data collection procedures are both taken into account. On the one hand, the two commonly used OCM construction methods based on object element and weighted by object area are analyzed, which indicate the classifier's distinguish ability and the thematic map accuracy respectively. With consideration that the object location uncertainty introduces the reference category uncertainty and may lead to the bias of thematic map accuracy assessment result, a novel fuzzy OCM construction method is proposed to more accurately assess the classification accuracy. On the other hand, a simple sample data collection strategy is proposed and validated to collect representative accuracy assessment samples. The object-oriented Quickbird image land use classification accuracy assessment experiment results are analyzed to validate the applicability of the proposed schemes. Suggestions on how to use object-based confusion matrix method in classification accuracy assessment are given in conclusion.
基于混淆矩阵的面向对象遥感图像分类精度评价
本文设计了一种基于对象的混淆矩阵(OCM)分类精度评估方案,以准确估计整体和单个类别的分类精度。估计方案和样本数据收集程序都被考虑在内。一方面,分析了基于目标元素和按目标面积加权两种常用的OCM构建方法,分别表明了分类器的区分能力和专题图的精度;考虑到目标位置的不确定性引入了参考类别的不确定性,可能导致专题地图精度评估结果的偏差,提出了一种新的模糊OCM构建方法,以更准确地评估分类精度。另一方面,提出并验证了一种简单的样本数据收集策略,以收集具有代表性的准确性评估样本。通过面向对象的Quickbird图像土地利用分类精度评价实验结果,验证了所提方案的适用性。最后对基于对象的混淆矩阵方法在分类精度评价中的应用提出了建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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