An Unsupervised Band Selection Method Based on Overall Accuracy Prediction

This paper proposes an image classification accuracy prediction based unsupervised band selection method for hyper spectral image classification. The key of this method is the prediction of overall classification accuracy for each spectral band with no ground truth or training samples. Under the hypothesis of Gaussian Mixture Model (GMM), we build the explicit expression between the overall accuracy and the distribution parameters of each class, which is denoted as the overall accuracy prediction equation (OCPE). Then, by employing the unsupervised mixture models learning algorithm to predict these distribution parameters, the overall accuracy is computable on the basis of the OCPE. Then, the candidate band subset is obtained by selecting the bands with relatively high overall accuracy. Finally, we use the divergence based band decor relation algorithm to further remove the redundant bands. Real hyper spectral images based experiments show that our band selection method is effective in comparison with other three well-known unsupervised band selection techniques.

[1]  Shiming Xiang,et al.  Classification oriented semi-supervised band selection for hyperspectral images , 2012, Proceedings of the 21st International Conference on Pattern Recognition (ICPR2012).

[2]  Robert I. Damper,et al.  Band Selection for Hyperspectral Image Classification Using Mutual Information , 2006, IEEE Geoscience and Remote Sensing Letters.

[3]  Trevor Hastie,et al.  Multi-class AdaBoost ∗ , 2009 .

[4]  Qian Du,et al.  A joint band prioritization and band-decorrelation approach to band selection for hyperspectral image classification , 1999, IEEE Trans. Geosci. Remote. Sens..

[5]  Lorenzo Bruzzone,et al.  A multiscale expectation-maximization semisupervised classifier suitable for badly posed image classification , 2006, IEEE Transactions on Image Processing.

[6]  Jihao Yin,et al.  Optimal Band Selection for Hyperspectral Image Classification Based on Inter-Class Separability , 2010, 2010 Symposium on Photonics and Optoelectronics.

[7]  Adolfo Martínez Usó,et al.  Comparison of Unsupervised Band Selection Methods for Hyperspectral Imaging , 2007, IbPRIA.

[8]  Leo Breiman,et al.  Random Forests , 2001, Machine Learning.

[9]  Rui Xu,et al.  Survey of clustering algorithms , 2005, IEEE Transactions on Neural Networks.

[10]  Jun Zhou,et al.  A hypergraph based semi-supervised band selection method for hyperspectral image classification , 2013, 2013 IEEE International Conference on Image Processing.

[11]  D. Rubin,et al.  Maximum likelihood from incomplete data via the EM - algorithm plus discussions on the paper , 1977 .

[12]  Adolfo Martínez Usó,et al.  Clustering-Based Hyperspectral Band Selection Using Information Measures , 2007, IEEE Transactions on Geoscience and Remote Sensing.

[13]  Ying Wang,et al.  Group sparsity based semi-supervised band selection for hyperspectral images , 2013, 2013 IEEE International Conference on Image Processing.

[14]  Chein-I Chang,et al.  Constrained band selection for hyperspectral imagery , 2006, IEEE Transactions on Geoscience and Remote Sensing.

[15]  Hairong Qi,et al.  Sparse representation based band selection for hyperspectral images , 2011, 2011 18th IEEE International Conference on Image Processing.

[16]  Anil K. Jain,et al.  Unsupervised Learning of Finite Mixture Models , 2002, IEEE Trans. Pattern Anal. Mach. Intell..

[17]  Adolfo Martínez Usó,et al.  Clustering-based multispectral band selection using mutual information , 2006, 18th International Conference on Pattern Recognition (ICPR'06).