Spectral-spatial classification of hyperspectral images using wavelet transform and hidden Markov random fields

Abstract This paper proposes a spectral–spatial method for classification of hyperspectral images. The proposed method, called SSC, consists of two steps. In the first step, to overcome the computation complexity, a wavelet-based classifier is designed. In the second step, to enhance the classification accuracy, a novel hidden Markov random field called NHMRF technique in spatial domain is suggested. In NHMRF, we convert two-dimensional energies of traditional hidden Markov random field to three-dimensional energies and then we apply edge preserving regularization terms on each two-dimensional energy of this cube. The class label of each test pixel is fixed based on minimum three-dimensional energy achieved by edge preserving regularization terms. Experimental results show that the classification accuracy of the proposed approach based on three-dimensional energies and edge preserving regularization terms is effectively improved in comparison with the state-of-the-art methods.

[1]  Hans-Peter Seidel,et al.  3D-modeling by ortho-image generation from image sequences , 2008, ACM Trans. Graph..

[2]  Chih-Jen Lin,et al.  LIBSVM: A library for support vector machines , 2011, TIST.

[3]  Sinthop Kaewpijit,et al.  Automatic reduction of hyperspectral imagery using wavelet spectral analysis , 2003, IEEE Trans. Geosci. Remote. Sens..

[4]  K. Fukunaga Chapter 11 – CLUSTERING , 1990 .

[5]  O. Dikshit,et al.  Segmentation-based classification of hyperspectral imagery using projected and correlation clustering techniques , 2016 .

[6]  A. Viera,et al.  Understanding interobserver agreement: the kappa statistic. , 2005, Family medicine.

[7]  J. Anthony Gualtieri,et al.  Support vector machines for hyperspectral remote sensing classification , 1999, Other Conferences.

[8]  Antonio J. Plaza,et al.  This article has been accepted for inclusion in a future issue of this journal. Content is final as presented, with the exception of pagination. IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING 1 Spectral–Spatial Hyperspectral Image Segmentation Using S , 2022 .

[9]  Allan Aasbjerg Nielsen,et al.  Kernel Maximum Autocorrelation Factor and Minimum Noise Fraction Transformations , 2011, IEEE Transactions on Image Processing.

[10]  Pavel Pudil,et al.  Introduction to Statistical Pattern Recognition , 2006 .

[11]  Zeev Farbman,et al.  Edge-preserving decompositions for multi-scale tone and detail manipulation , 2008, ACM Trans. Graph..

[12]  Yukio Kosugi,et al.  Detection and Analysis of the Intestinal Ischemia Using Visible and Invisible Hyperspectral Imaging , 2010, IEEE Transactions on Biomedical Engineering.

[13]  Jian Sun,et al.  Guided Image Filtering , 2010, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[14]  G. F. Hughes,et al.  On the mean accuracy of statistical pattern recognizers , 1968, IEEE Trans. Inf. Theory.

[15]  Donald Geman,et al.  Stochastic Relaxation, Gibbs Distributions, and the Bayesian Restoration of Images , 1984, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[16]  Xin Yu,et al.  Anisotropic Diffusion for Hyperspectral Imagery Enhancement , 2010, IEEE Sensors Journal.

[17]  Pedram Ghamisi,et al.  Spectral–Spatial Classification of Hyperspectral Images Based on Hidden Markov Random Fields , 2014, IEEE Transactions on Geoscience and Remote Sensing.

[18]  Nello Cristianini,et al.  An Introduction to Support Vector Machines and Other Kernel-based Learning Methods , 2000 .

[19]  Stephen M. Smith,et al.  Segmentation of brain MR images through a hidden Markov random field model and the expectation-maximization algorithm , 2001, IEEE Transactions on Medical Imaging.

[20]  Jon Atli Benediktsson,et al.  SVM- and MRF-Based Method for Accurate Classification of Hyperspectral Images , 2010, IEEE Geoscience and Remote Sensing Letters.

[21]  Langming Zhou,et al.  Discriminative spatial-spectral manifold embedding for hyperspectral image classification , 2015 .

[22]  Kotagiri Ramamohanarao,et al.  MASCOT: Fast and Highly Scalable SVM Cross-Validation Using GPUs and SSDs , 2014, 2014 IEEE International Conference on Data Mining.

[23]  Jon Atli Benediktsson,et al.  Spectral–Spatial Hyperspectral Image Classification With Edge-Preserving Filtering , 2014, IEEE Transactions on Geoscience and Remote Sensing.

[24]  Jon Atli Benediktsson,et al.  Integration of Segmentation Techniques for Classification of Hyperspectral Images , 2014, IEEE Geoscience and Remote Sensing Letters.

[25]  Yiming Yan,et al.  Spectral-spatial classification of hyperspectral images based on joint bilateral filter and stacked sparse autoencoder , 2017, 2017 First International Conference on Electronics Instrumentation & Information Systems (EIIS).

[26]  Hassan Ghassemian,et al.  Integrating Hierarchical Segmentation Maps With MRF Prior for Classification of Hyperspectral Images in a Bayesian Framework , 2016, IEEE Transactions on Geoscience and Remote Sensing.

[27]  N. Cristianini,et al.  An Introduction to Support Vector Machines and Other Kernel-based Learning Methods: Kernel-Induced Feature Spaces , 2000 .