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A New Subspace Approach for Supervised Hyperspectral Image Classification

A New Subspace Approach for Supervised Hyperspectral Image Classification. Jun Li 1,2 , José M. Bioucas-Dias 2 and Antonio Plaza 1 1 Hyperspectral Computing Laboratory University of Extremadura, Cáceres, Spain 2 Instituto de Telecomunicaçoes, Instituto Superior Técnico, TULisbon, Portugal

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A New Subspace Approach for Supervised Hyperspectral Image Classification

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  1. A New Subspace Approach for Supervised Hyperspectral Image Classification Jun Li1,2, José M. Bioucas-Dias2and Antonio Plaza1 1Hyperspectral Computing Laboratory University of Extremadura, Cáceres, Spain 2Instituto de Telecomunicaçoes, Instituto Superior Técnico, TULisbon, Portugal Contact e-mails: {junli, aplaza}@unex.es, bioucas@lx.it.pt

  2. A New Subspace Approach for Hyperspectral Classification Talk Outline: 1. Challenges in hyperspectral image classification 2. Subspace projection 2.1. Subspace projection-based framework 2.2. Considered subspace projection techniques: PCA versus HySime 2.3. Integration with different classifiers (LDA, SVM, MLR) 3. Experimental results 3.1. Experiments with AVIRIS Indian Pines hyperspectral data 3.2. Experiments with ROSIS Pavia University hyperspectral 4. Conclusions and future research lines IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011

  3. Challenges in Hyperspectral Image Classification Concept of hyperspectral imaging using NASA Jet Propulsion Laboratory’s Airborne Visible Infra-Red Imaging Spectrometer IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011 1

  4. Challenges in Hyperspectral Image Classification Challenges in hyperspectral image classification • Imbalance between dimensionality and training samples, presence of mixed pixels Ultraspectral (1000’s of bands) Hyperspectral (100’s of bands) Multispectral (10’s of bands) Panchromatic IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011 2

  5. Challenges in Hyperspectral Image Classification Challenges in hyperspectral image classification • The special characteristics of hyperspectral data pose several processing problems: • The high-dimensional nature of hyperspectral data introduces important limitations in supervised classifiers, such as the limited availability of training samples or the inherently complex structure of the data • There is a need to address the presence of mixed pixels resulting from insufficient spatial resolution and other phenomena in order to properly model the hyperspectral data • There is a need to develop computationally efficient algorithms, able to provide a response in a reasonable time and thus address the computational requirements of time-critical remote sensing applications • In this work, we evaluate the impact of using subspace projection techniques prior to supervised classification of hyperspectral image data while analyzing each of the aforementioned items IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011 3

  6. A New Subspace Approach for Hyperspectral Classification Talk Outline: 1. Challenges in hyperspectral image classification 2. Subspace projection 2.1. Subspace projection-based framework 2.2. Considered subspace projection techniques: PCA versus HySime 2.3. Integration with different classifiers (LDA, SVM, MLR) 3. Experimental results 3.1. Experiments with AVIRIS Indian Pines hyperspectral data 3.2. Experiments with ROSIS Pavia University hyperspectral 4. Conclusions and future research lines IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011

  7. Subspace Projection-Based Framework Subspace projection-based framework.- • Hyperspectral image data generally lives in a lower-dimensional subspace compared with the input feature dimensionality • This can be exploited to address ill-posed problems given by limited training samples • The projection into such subspaces allows us to specifically avoid spectral confusion due to mixed pixels, thus reducing their impact in the subsequent classification process J. Li, J. M. Bioucas-Dias and A. Plaza, “Spectral-spatial hyperspectral image segmentation using sub-space multinomial logistic regression and Markov random fields,” IEEE Transactions on Geoscience and Remote Sensing, in press, 2011. IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011 4

  8. Considered Subspace Projection Techniques: PCA versus HySime Principal Component Analysis (PCA).- • High-dimensional data can be transformed effectively according to its distribution in feature space (e.g. by finding the most important directions or axes, establishing those axes as the references of a new coordinate system which takes into account data distribution) • Orders the resulting components in decreasing order of variance IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011 5

  9. Considered Subspace Projection Techniques: PCA versus HySime Principal Component Analysis (PCA).- • High-dimensional data can be transformed effectively according to its distribution in feature space (e.g. by finding the most important directions or axes, establishing those axes as the references of a new coordinate system which takes into account data distribution) • Orders the resulting components in decreasing order of variance IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011 6

  10. Principal Component Analysis HySime • Seeks for the projection that best represents the original hyperspectral data in least square sense • Reduces the original signal into subset of eigenvectors without computing any noise statistics • The difficulty in getting reliable noise estimates from the resulting eigenvalues is that these eigenvalues still represent mixtures of signal sources and noise • HySime finds the subset of eigenvectors and the correspondent eigenvalues by minimizing the mean square error between the original signal and its projection onto the eigenvector subspace • Uses multiple regressions for the estimation of the noise and signal covariance matrices • Optimally represents the original signal with minimum error Considered Subspace Projection Techniques: PCA versus HySime Hyperspectral Signal Identification by Minimum Error (HySime).- • A recently developed method for subspace identification in remotely sensed hyperspectral data, which offers several additional features with regards to principal component analysis and other subspace projection techniques J. M. Bioucas-Dias and J. M. P Nascimento, “Hyperspectral subspace identification,” IEEE Transactions on Geoscience and Remote Sensing, vol. 46, no. 8, pp. 2435-2445, 2008. IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011 7

  11. PCA, HySime Subspace projection Randomly selected Test Samples Training Samples Supervised classifier Test classification accuracy Supervised Classification Framework Tested in this Work Supervised Classification Framework.- • Includes subspace projection and supervised classification based on training samples: IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011 8

  12. Integration with different classifiers (LDA, SVM, MLR) Integration of subspace-based framework with different classifiers.- • Three different supervised classifiers tested in this work: • Linear discriminant analysis (LDA): find a linear combination of features which separate two or more classes; the resulting combination may be used as a linear classifier (only linearly separable classes will remain separable after applying LDA) • Support vector machine (SVM): constructs a set of hyperplanes in high-dimensional space; a good separation is achieved by the hyperplane that has the largest distance to the nearest training data points of any class • Multinomial logistic regression (MLR): models the posterior class distributions in a Bayesian framework, thus supplying (in addition to the boundaries between the classes) a degree of plausibility for such classes IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011 9

  13. A New Subspace Approach for Hyperspectral Classification Talk Outline: 1. Challenges in hyperspectral image classification 2. Subspace projection 2.1. Classic techniques for subspace projection: PCA versus HySime 2.2. Subspace projection-based framework 2.3. Integration with different classifiers (LDA, SVM, MLR) 3. Experimental results 3.1. Experiments with AVIRIS Indian Pines hyperspectral data 3.2. Experiments with ROSIS Pavia University hyperspectral 4. Conclusions and future research lines IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011

  14. Experimental Results Using Real Hyperspectral Data Sets AVIRIS Indian Pines data set.- • Challenging classification scenario due to spectrally similar classes • Early growth stage of the agricultural features (only around 5% coverage of soil) • 145x145 pixels, 202 spectral bands, 16 ground-truth classes • 10366 labeled pixels (random training subsets evenly distributed among classes) False color composition Ground-truth IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011 10

  15. Experimental Results Using Real Hyperspectral Data Sets AVIRIS Indian Pines data set.- • Classification results using 160 training samples (10 training samples per class) • For the SVM classifier we used the Gaussian RBF kernel after testing other kernels • The mean accuracies (after 10 Monte Carlo runs) and processing times are reported IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011 11

  16. Experimental Results Using Real Hyperspectral Data Sets AVIRIS Indian Pines data set.- • Classification results using 240 training samples (15 training samples per class) • For the SVM classifier we used the Gaussian RBF kernel after testing other kernels • The mean accuracies (after 10 Monte Carlo runs) and processing times are reported IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011 12

  17. Experimental Results Using Real Hyperspectral Data Sets AVIRIS Indian Pines data set.- • Classification results using 320 training samples (20 training samples per class) • For the SVM classifier we used the Gaussian RBF kernel after testing other kernels • The mean accuracies (after 10 Monte Carlo runs) and processing times are reported IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011 13

  18. Experimental Results Using Real Hyperspectral Data Sets AVIRIS Indian Pines data set.- • Classification results using 320 training samples (20 training samples per class) LDA (OA=50.74%) SVM (OA=65.36%) Subspace LDA (OA=54.90%) Subspace SVM (OA=70.33%) Linear MLR (OA=60.38%) Ground-truth Subspace MLR (OA=67.53%) IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011 14

  19. Experimental Results Using Real Hyperspectral Data Sets ROSIS Pavia University data set.- Overall classification accuracies and kappa coefficient (in the parentheses) using different training sets for the ROSIS Pavia University IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011 15

  20. Conclusions and Hints at Plausible Future Research Conclusions and Future Lines.- • We have evaluated the impact of subspace projection on supervised classification of remotely sensed hyperspectral image data sets • Two dimensionality reduction methods have been used: PCA and HySime, although many others are available and could be used: MNF, OSP, VD • Three different supervised classifiers considered: LDA, SVM, MLR • Experimental results indicate that different approaches for hyperspectral image classification approaches can benefit from subspace projection, particularly when very limited training samples are available • Subspace projection can be naturally integrated with multinomial logistic regression (MLR) classifiers, which greatly benefit from dimensionality reduction • Future work will focus on the evaluation of other subspace projection approaches and hyperspectral data sets IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011 16

  21. IEEE J-STARS Special Issue on Hyperspectral Image and Signal Processing IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2011), Vancouver, Canada, July 24 – 29, 2011 17

  22. A New Subspace Approach for Supervised Hyperspectral Image Classification Jun Li1,2, José M. Bioucas-Dias2and Antonio Plaza1 1Hyperspectral Computing Laboratory University of Extremadura, Cáceres, Spain 2Instituto de Telecomunicaçoes, Instituto Superior Técnico, TULisbon, Portugal Contact e-mails: {junli, aplaza}@unex.es, bioucas@lx.it.pt

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