Comparison of the multilayer perceptron with neuro-fuzzy techniques in the estimation of cover class mixture in remotely sensed data

被引:42
作者
Baraldi, A [1 ]
Binaghi, E
Blonda, P
Brivio, PA
Rampini, A
机构
[1] CNR, Ist Tecnol Informat Multimediali, I-20131 Milan, Italy
[2] CNR, IESI, I-70126 Bari, Italy
[3] CNR, Telerilevamento IRRS, I-20133 Milan, Italy
来源
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING | 2001年 / 39卷 / 05期
关键词
classification accuracy measure; clustering; neuro-fuzzy classifier; per-pixel spectral unmixing; soft and hard classification; supervised and unsupervised learning;
D O I
10.1109/36.921417
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
Mixed pixels are a major source of inconvenience in the classification of remotely sensed data, This paper compares MLP with so-called neuro-fuzzy algorithms in the estimation of pixel component cover classes. Two neuro-fuzzy networks are selected from the literature as representatives of soft classifiers featuring different combinations of fuzzy set-theoretic principles with neural network learning mechanisms. These networks are: 1) the fuzzy multilayer perceptron (FMLP) and 2) a two-stage hybrid (TSH) learning neural network whose unsupervised first stage consists of the fully self-organizing simplified adaptive resonance theory (FOSART) clustering model. FMLP, TSH, and MLP are compared on CLASSITEST, a standard set of synthetic images where per-pixel proportions of cover class mixtures are known a priori. Results are assessed by means of evaluation tools specifically developed for the comparison of soft classifiers. Experimental results show that classification accuracies of FMLP and TSH are comparable, whereas TSH is faster to train than FMLP, On the other hand, FMLP and TSH outperform MLP when little prior knowledge is available for training the network, i.e., when no fuzzy training sites, describing intermediate label assignments, are available.
引用
收藏
页码:994 / 1005
页数:12
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