基于误差分析的组合分类器研究
Study on Combined Classifier Based on Error Analysis
- 2008年第5期 页码:683-691
纸质出版日期: 2008
DOI: 10.11834/jrs.20080589
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纸质出版日期: 2008 ,
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[1]陈学泓,陈晋,杨伟,朱锴.基于误差分析的组合分类器研究[J].遥感学报,2008(05):683-691.
CHEN Xue-hong, CHEN Jin, YANG Wei, et al. Study on Combined Classifier Based on Error Analysis[J]. Journal of Remote Sensing, 2008,(5):683-691.
提出了一种基于误差分析的组合分类器
通过结合两种监督分类方法
提出的算法分别估计了两种监督分类方法在计算过程中的误差
给出了规则输出的置信区间
再根据置信区间的大小对两种分类方法的输出结果进行加权平均
从而得到更精确的规则输出。利用该方法对遥感图像进行分类实验
在不同训练样本分布与不同训练样本数量的情况下
比较新的组合分类器与单一分类器的精度。结果表明新的组合分类器能够取得比单一的分类器更高的分类精度。结果还显示出
两个分类器的独立性越强
组合分类器的效果越好。另外一个实验比较了新的组合分类器与和式规则组合分类器的分类精度
结果仍显示出了新方法的优越性。
Remote sensing is widely used in mapping land use /land cover types and monitoring land use /land cover changes from regional to global scale.Supervised classification method is a powerful tool in extracting land cover and land use information from remotely sensed images.Although many supervised classification method have been developed in machine learning field
there are not a universal best performing method yet.That is
different kinds of classification methods have their own advantages and defects.This phenomenon is called selective superiority.It is necessary to explore a method that can integrate advantages of different classifiers and avoid their weakness.Combining classifiers properly may improve classification accuracy
because different classifiers may have different mistake sets.Combined classifiers have been studied widely in machine learning field;however
it was seldom studied in remote sensing image classification.This paper proposed one type of combined classifier based on error analysis
which incorporates the rule outputs of maximum likelihood classification(MLC) and support vector machine(SVM)
to achieve higher classification accuracy.MLC is the most widely used classification method in computer processing of remotely sensed images.It is based on classical statistical theory and has solid probability meanings.However
the classified accuracy of this method would be affected seriously if the training sample distribution does not follow normal distribution.SVM is a newly developed classifier
which is based on statistical learning theory.SVM is robust for small sample
and it has shown a good performance in many studies.However
the original SVM classifier is a binary classifier
which needs to be extended to a multi-class classifier through extra works.How to effectively extend binary SVM to multi-class classification is still an on-going research issue and it probably affect the performance of SVM.The new method proposed in this paper first estimates the errors of two classifiers
which are denoted by the confidence intervals of rule outputs
then combines their rule outputs with weights depending on the confidence intervals
and finally acquires a more accurate rule output.Classification experiments were conducted on case study area(Summer Palace area in Beijing).Classification accuracies of the combined classifier and two single classifiers were compared with different sample distribution and different sample amount.And the results demonstrated that the new combined classifier can acquire a higher accuracy than other two classifiers.The results also revealed that combined classifier performs better when two classifiers are more independent.Another compared experiment was done between new combined classifier and previous combined classifier by averaging
and result also showed that new method had better performance.However
there are still some defects in the new method.Firstly
error analysis is not completely finished for the two classifiers;secondly
error analysis based on classical statistical theory would be too optimistic for MLC.Although there are some disadvantages in the new combined classifier based on error analysis
it still has shown promising potential in remotely sensed image classification.
组合分类器误差分析置信区间土地利用遥感
combined classifiererror analysisconfidence intervalland use/ land coverremote sensing
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