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Spatial-Aware Supervised Learning for Hyper-Spectral Image Classification Comprehensive Assessment

Spatial-Aware Supervised Learning for Hyper-Spectral Image Classification Comprehensive Assessment
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摘要 A comprehensive assessment of the spatial-aware supervised learning algorithms for hyper-spectral image(HSI)classification was presented.For this purpose,standard support vector machines(SVMs),multinomial logistic regression(MLR)and sparse representation(SR) based supervised learning algorithm were compared both theoretically and experimentally.Performance of the discussed techniques was evaluated in terms of overall accuracy,average accuracy,kappa statistic coefficients,and sparsity of the solutions.Execution time,the computational burden,and the capability of the methods were investigated by using probabilistic analysis.For validating the accuracy a classical benchmark AVIRIS Indian pines data set was used.Experiments show that integrating spectral-spatial context can further improve the accuracy,reduce the misclassification error although the cost of computational time will be increased. A comprehensive assessment of the spatial.aware mpervised learning algorithms for hyper.spectral image (HSI) classification was presented. For this purpose, standard support vector machines ( SVMs ), mudttnomial logistic regression ( MLR ) and sparse representation (SR) based supervised learning algorithm were compared both theoretically and experimentally. Performance of the discussed techniques was evaluated in terms of overall accuracy, average accuracy, kappa statistic coefficients, and sparsity of the solutions. Execution time, the computational burden, and the capability of the methods were investigated by using probabilistie analysis. For validating the accuracy a classical benchmark AVIRIS Indian pines data set was used. Experiments show that integrating spectral.spatial context can further improve the accuracy, reduce the misclassltication error although the cost of computational time will be increased.
作者 SOOMRO Bushra Naz 肖亮 SOOMRO Shahzad Hyder MOLAEI Mohsen SOOMRO Bushra Naz XIAO Liang SOOMRO Shahzad Hyder MOLAEI Mohsen(School of Computer Science and Engineering, Nanjing University of Science and Technology, Nanjing 210094, China)
出处 《Journal of Donghua University(English Edition)》 EI CAS 2016年第6期954-960,共7页 东华大学学报(英文版)
基金 National Key Research and Development Program of China(No.2016YFF0103604) National Natural Science Foundations of China(Nos.61171165,11431015,61571230) National Scientific Equipment Developing Project of China(No.2012YQ050250) Natural Science Foundation of Jiangsu Province,China(No.BK20161500)
关键词 learning algorithms hyper-spectral image classification support vector machine(SVM) multinomial logistic regression(MLR) elastic net regression(ELNR) sparse representation(SR) spatial-aware learning algorithms hyper-spectral image classification support vector machine(SVM) multinomial logistic regression(MLR) elastic net regression ( ELNR ) sparse representation ( SR ) spatial-aware
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