TY - GEN
T1 - Improving hyperspectral image classification accuracy using Iterative SVM with spatial-spectral information
AU - He, Mingyi
AU - Imran, Farid Muhammad
AU - Belkacem, Baassou
AU - Mei, Shaohui
PY - 2013
Y1 - 2013
N2 - Hyper-Spectral Images (HSI) classification is one of essential problems in hyperspectral image processing and one of the major difficulties in supervised hyperspectral image classification is the limited availability of training data, as it is hard to obtain in real remote sensing scenarios. In this paper we have presented our proposed approach to improve the accuracy of HSI in the situations where the training samples are very limited and also where we attain misclassification due to random training samples. Our proposed approach is based on the Iterative Support Vector Machine (ISVM) and also on the spatial and spectral information. In order to improve the performance of ISVM, the Majority Voting (MV) and the marker map correction techniques are used to correct the training samples at each iteration of ISVM. Experiments on practical Hyperspectral images including AVIRIS Indian Pine Image are conducted and the results shown that the proposed approach works better than ISVM and other classifiers such as SVM-RBF, Linear-SVM and K-NN.
AB - Hyper-Spectral Images (HSI) classification is one of essential problems in hyperspectral image processing and one of the major difficulties in supervised hyperspectral image classification is the limited availability of training data, as it is hard to obtain in real remote sensing scenarios. In this paper we have presented our proposed approach to improve the accuracy of HSI in the situations where the training samples are very limited and also where we attain misclassification due to random training samples. Our proposed approach is based on the Iterative Support Vector Machine (ISVM) and also on the spatial and spectral information. In order to improve the performance of ISVM, the Majority Voting (MV) and the marker map correction techniques are used to correct the training samples at each iteration of ISVM. Experiments on practical Hyperspectral images including AVIRIS Indian Pine Image are conducted and the results shown that the proposed approach works better than ISVM and other classifiers such as SVM-RBF, Linear-SVM and K-NN.
KW - classification
KW - hyperspectral images
KW - iterative support vector machine (ISVM)
KW - spatial information
UR - http://www.scopus.com/inward/record.url?scp=84889572989&partnerID=8YFLogxK
U2 - 10.1109/ChinaSIP.2013.6625384
DO - 10.1109/ChinaSIP.2013.6625384
M3 - 会议稿件
AN - SCOPUS:84889572989
SN - 9781479910434
T3 - 2013 IEEE China Summit and International Conference on Signal and Information Processing, ChinaSIP 2013 - Proceedings
SP - 471
EP - 475
BT - 2013 IEEE China Summit and International Conference on Signal and Information Processing, ChinaSIP 2013 - Proceedings
T2 - 2013 IEEE China Summit and International Conference on Signal and Information Processing, ChinaSIP 2013
Y2 - 6 July 2013 through 10 July 2013
ER -