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2017 | OriginalPaper | Buchkapitel

Efficient Deep Belief Network Based Hyperspectral Image Classification

verfasst von : Atif Mughees, Linmi Tao

Erschienen in: Image and Graphics

Verlag: Springer International Publishing

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Abstract

Hyperspectral Image (HSI) classification plays a key role remote sensing field. Recently, deep learning has demonstrated its effectiveness in HSI Classification field. This paper presents a spectral-spatial HSI classification technique established on the deep learning based deep belief network (DBN) for deep and abstract feature extraction and adaptive boundary adjustment based segmentation. Proposed approach focuses on integrating the deep learning based spectral features and segmentation based spatial features into a framework for improved performance. Specifically, first the deep DBN model is exploited as a spectral feature extraction based classifier to extract the deep spectral features. Second, spatial contextual features are obtained by utilizing effective adaptive boundary adjustment based segmentation technique. Finally, maximum voting based criteria is operated to integrate the results of extracted spectral and spatial information for improved HSI classification. In general, exploiting spectral features from DBN process and spatial features from segmentation and integration of spectral and spatial information by maximum voting based criteria, has a substantial effect on the performance of HSI classification. Experimental performance on real and widely used hyperspectral data sets with different contexts and resolutions demonstrates the accuracy of the proposed technique and performance is comparable to several recently proposed HSI classification techniques.

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Literatur
1.
Zurück zum Zitat Ambikapathi, A., et al.: Convex geometry based outlier-insensitive estimation of number of endmembers in hyperspectral images. Signal 1, 1–20 (2012) Ambikapathi, A., et al.: Convex geometry based outlier-insensitive estimation of number of endmembers in hyperspectral images. Signal 1, 1–20 (2012)
2.
Zurück zum Zitat Benediktsson, J.A., Chanussot, J.C., Moon, W.M., et al.: Advances in Very high-resolution Remote Sensins. IEEE (2013) Benediktsson, J.A., Chanussot, J.C., Moon, W.M., et al.: Advances in Very high-resolution Remote Sensins. IEEE (2013)
3.
Zurück zum Zitat Bengio, Y., Courville, A., Vincent, P.: Representation learning: a review and new perspectives. IEEE Trans. Pattern Anal. Mach. Intell. 35(8), 1798–1828 (2013)CrossRef Bengio, Y., Courville, A., Vincent, P.: Representation learning: a review and new perspectives. IEEE Trans. Pattern Anal. Mach. Intell. 35(8), 1798–1828 (2013)CrossRef
4.
Zurück zum Zitat Camps-Valls, G., et al.: Advances in hyperspectral image classification: earth monitoring with statistical learning methods. IEEE Signal Process. Mag. 31(1), 45–54 (2013)CrossRef Camps-Valls, G., et al.: Advances in hyperspectral image classification: earth monitoring with statistical learning methods. IEEE Signal Process. Mag. 31(1), 45–54 (2013)CrossRef
5.
Zurück zum Zitat Chen, Y., Nasrabadi, N.M., Tran, T.D.: Hyperspectral image classification via kernel sparse representation. IEEE Trans. Geosci. Remote Sens. 51(1), 217–231 (2013)CrossRef Chen, Y., Nasrabadi, N.M., Tran, T.D.: Hyperspectral image classification via kernel sparse representation. IEEE Trans. Geosci. Remote Sens. 51(1), 217–231 (2013)CrossRef
6.
Zurück zum Zitat Chen, Y., Zhao, X., Jia, X.: Spectral-spatial classification of hyperspectral data based on deep belief network. IEEE J. Sel. Top. Appl. Earth Observations Remote Sens. 8(6), 2381–2392 (2015)CrossRef Chen, Y., Zhao, X., Jia, X.: Spectral-spatial classification of hyperspectral data based on deep belief network. IEEE J. Sel. Top. Appl. Earth Observations Remote Sens. 8(6), 2381–2392 (2015)CrossRef
7.
Zurück zum Zitat Ghamisi, P., Benediktsson, J.A., Sveinsson, J.R.: Automatic spectral-spatial classification framework based on attribute profiles and supervised feature extraction. IEEE Trans. Geosci. Remote Sens. 52(9), 5771–5782 (2014)CrossRef Ghamisi, P., Benediktsson, J.A., Sveinsson, J.R.: Automatic spectral-spatial classification framework based on attribute profiles and supervised feature extraction. IEEE Trans. Geosci. Remote Sens. 52(9), 5771–5782 (2014)CrossRef
8.
Zurück zum Zitat Ghamisi, P., et al.: Automatic framework for spectral-spatial classification based on supervised feature extraction and morphological attribute profiles. IEEE J. Sel. Top. Appl. Earth Observations Remote Sens. 7(6), 2147–2160 (2014)CrossRef Ghamisi, P., et al.: Automatic framework for spectral-spatial classification based on supervised feature extraction and morphological attribute profiles. IEEE J. Sel. Top. Appl. Earth Observations Remote Sens. 7(6), 2147–2160 (2014)CrossRef
9.
Zurück zum Zitat Gualtieri, J.A., Chettri, S.: Support vector machines for classification of hyperspectral data. In: IEEE 2000 International Geoscience and Remote Sensing Symposium, Proceedings, IGARSS 2000, vol. 2, pp. 813–815. IEEE (2000) Gualtieri, J.A., Chettri, S.: Support vector machines for classification of hyperspectral data. In: IEEE 2000 International Geoscience and Remote Sensing Symposium, Proceedings, IGARSS 2000, vol. 2, pp. 813–815. IEEE (2000)
10.
12.
Zurück zum Zitat Hu, W., et al.: Deep convolutional neural networks for hyperspectral image classification. J. Sens. 2015 (2015) Hu, W., et al.: Deep convolutional neural networks for hyperspectral image classification. J. Sens. 2015 (2015)
13.
Zurück zum Zitat Hughes, G.: On the mean accuracy of statistical pattern recognizers. IEEE Trans. Inf. Theory 14(1), 55–63 (1968)CrossRef Hughes, G.: On the mean accuracy of statistical pattern recognizers. IEEE Trans. Inf. Theory 14(1), 55–63 (1968)CrossRef
14.
Zurück zum Zitat Lam, L., Suen, S.Y.: Application of majority voting to pattern recognition: an analysis of its behavior and performance. IEEE Trans. Syst. Man Cybern. Part A Syst. Hum. 27(5), 553–568 (1997)CrossRef Lam, L., Suen, S.Y.: Application of majority voting to pattern recognition: an analysis of its behavior and performance. IEEE Trans. Syst. Man Cybern. Part A Syst. Hum. 27(5), 553–568 (1997)CrossRef
15.
Zurück zum Zitat Li, J., Zhang, H., Zhang, L.: Supervised segmentation of very high resolution images by the use of extended morphological attribute profiles and a sparse transform. IEEE Geosci. Remote Sens. Lett. 11(8), 1409–1413 (2014)CrossRef Li, J., Zhang, H., Zhang, L.: Supervised segmentation of very high resolution images by the use of extended morphological attribute profiles and a sparse transform. IEEE Geosci. Remote Sens. Lett. 11(8), 1409–1413 (2014)CrossRef
16.
Zurück zum Zitat Li, J., Bioucas-Dias, J.M.: Hyperspectral image segmentation using a new Bayesian approach with active learning. IEEE Trans. Geosci. Remote Sens. 49(10), 3947–3960 (2011)CrossRef Li, J., Bioucas-Dias, J.M.: Hyperspectral image segmentation using a new Bayesian approach with active learning. IEEE Trans. Geosci. Remote Sens. 49(10), 3947–3960 (2011)CrossRef
17.
Zurück zum Zitat Li, J., et al.: Generalized composite kernel framework for hyperspectral image classification. IEEE Trans. Geosci. Remote Sens. 51(9), 4816–4829 (2013)CrossRef Li, J., et al.: Generalized composite kernel framework for hyperspectral image classification. IEEE Trans. Geosci. Remote Sens. 51(9), 4816–4829 (2013)CrossRef
18.
Zurück zum Zitat Melgani, F., Bruzzone, L.: Classification of hyperspectral remote sensing images with support vector machines. IEEE Trans. Geosci. Remote Sens. 42(8), 1778–1790 (2004)CrossRef Melgani, F., Bruzzone, L.: Classification of hyperspectral remote sensing images with support vector machines. IEEE Trans. Geosci. Remote Sens. 42(8), 1778–1790 (2004)CrossRef
19.
Zurück zum Zitat Mohamed, A., Dahl, G., Hinton, G.E.: Deep belief networks for phone recognition. In: NIPS Workshop on Deep Learning for Speech Recognition and Related Applications, vol. 1, no. 9, p. 39 (2009) Mohamed, A., Dahl, G., Hinton, G.E.: Deep belief networks for phone recognition. In: NIPS Workshop on Deep Learning for Speech Recognition and Related Applications, vol. 1, no. 9, p. 39 (2009)
20.
Zurück zum Zitat Mughees, A., Chen, X., Tao, L.: Unsupervised hyperspectral image segmentation: merging spectral and spatial information in boundary adjustment. In: 2016 55th Annual Conference of the Society of Instrument and Control Engineers of Japan (SICE), pp. 1466–1471. IEEE (2016) Mughees, A., Chen, X., Tao, L.: Unsupervised hyperspectral image segmentation: merging spectral and spatial information in boundary adjustment. In: 2016 55th Annual Conference of the Society of Instrument and Control Engineers of Japan (SICE), pp. 1466–1471. IEEE (2016)
21.
Zurück zum Zitat Mughees, A., Tao, L.: Efficient deep auto-encoder learning for the classification of hyperspectral images. In: 2016 International Conference on Virtual Reality and Visualization (ICVRV), pp. 44–51. IEEE (2016) Mughees, A., Tao, L.: Efficient deep auto-encoder learning for the classification of hyperspectral images. In: 2016 International Conference on Virtual Reality and Visualization (ICVRV), pp. 44–51. IEEE (2016)
22.
Zurück zum Zitat Mughees, A., Tao, L.: Hyper-voxel based deep learning for hyperspectral image classification. In: 2017 IEEE International Conference on Image Processing (ICIP) (2017, Accepted) Mughees, A., Tao, L.: Hyper-voxel based deep learning for hyperspectral image classification. In: 2017 IEEE International Conference on Image Processing (ICIP) (2017, Accepted)
23.
Zurück zum Zitat Mughees, A., et al.: AB3C: adaptive boundary-based band-categorization of hyperspectral images. J. Appl. Remote Sens. 10(4), 046009–046009 (2016)CrossRef Mughees, A., et al.: AB3C: adaptive boundary-based band-categorization of hyperspectral images. J. Appl. Remote Sens. 10(4), 046009–046009 (2016)CrossRef
24.
Zurück zum Zitat Ratle, F., Camps-Valls, G., Weston, J.: Semisupervised neural networks for efficient hyperspectral image classification. IEEE Trans. Geosci. Remote Sens. 48(5), 2271–2282 (2010)CrossRef Ratle, F., Camps-Valls, G., Weston, J.: Semisupervised neural networks for efficient hyperspectral image classification. IEEE Trans. Geosci. Remote Sens. 48(5), 2271–2282 (2010)CrossRef
25.
Zurück zum Zitat Rodarmel, C., Shan, J.: Principal component analysis for hyperspectral image classification. Surveying Land Inform. Sci. 62(2), 115 (2002) Rodarmel, C., Shan, J.: Principal component analysis for hyperspectral image classification. Surveying Land Inform. Sci. 62(2), 115 (2002)
26.
Zurück zum Zitat Tarabalka, Y.: Classification of hyperspectral data using spectral-spatial approaches. PhD thesis, Institut National Polytechnique de Grenoble-INPG (2010) Tarabalka, Y.: Classification of hyperspectral data using spectral-spatial approaches. PhD thesis, Institut National Polytechnique de Grenoble-INPG (2010)
27.
Zurück zum Zitat Tropp, J.A., Gilbert, A.C.: Signal recovery from random measurements via orthogonal matching pursuit. IEEE Trans. Inf. Theory 53(12), 4655–4666 (2007)MathSciNetCrossRefMATH Tropp, J.A., Gilbert, A.C.: Signal recovery from random measurements via orthogonal matching pursuit. IEEE Trans. Inf. Theory 53(12), 4655–4666 (2007)MathSciNetCrossRefMATH
28.
Zurück zum Zitat Wang, J., Chang, C.-I.: Independent component analysis-based dimensionality reduction with applications in hyperspectral image analysis. IEEE Trans. Geosci. Remote Sens. 44(6), 1586–1600 (2006)CrossRef Wang, J., Chang, C.-I.: Independent component analysis-based dimensionality reduction with applications in hyperspectral image analysis. IEEE Trans. Geosci. Remote Sens. 44(6), 1586–1600 (2006)CrossRef
29.
Zurück zum Zitat Willett, R.M., et al.: Sparsity and structure in hyperspectral imaging: sensing, reconstruction, and target detection. IEEE Signal Process. Mag. 31(1), 116–126 (2014)CrossRef Willett, R.M., et al.: Sparsity and structure in hyperspectral imaging: sensing, reconstruction, and target detection. IEEE Signal Process. Mag. 31(1), 116–126 (2014)CrossRef
30.
Zurück zum Zitat Yu, D., Deng, L., Wang, S.: Learning in the deep-structured conditional random fields. In: Proceedings of NIPS Workshop, pp. 1–8 (2009) Yu, D., Deng, L., Wang, S.: Learning in the deep-structured conditional random fields. In: Proceedings of NIPS Workshop, pp. 1–8 (2009)
31.
Zurück zum Zitat Zhang, L., Zhang, L., Bo, D.: Deep learning for remote sensing data: a technical tutorial on the state of the art. IEEE Trans. Geosci. Remote Sens. 4(2), 22–40 (2016)CrossRef Zhang, L., Zhang, L., Bo, D.: Deep learning for remote sensing data: a technical tutorial on the state of the art. IEEE Trans. Geosci. Remote Sens. 4(2), 22–40 (2016)CrossRef
32.
Zurück zum Zitat Zhang, L., Zhang, L., Du, B.: Learning conditional random fields for classification of hyperspectral images. IEEE Trans. Image Process. 19(7), 1890–1907 (2010)MathSciNetCrossRef Zhang, L., Zhang, L., Du, B.: Learning conditional random fields for classification of hyperspectral images. IEEE Trans. Image Process. 19(7), 1890–1907 (2010)MathSciNetCrossRef
33.
Zurück zum Zitat Zhou, Y., Peng, J., Chen, C.L.P.: Extreme learning machine with composite kernels for hyperspectral image classification. IEEE J. Sel. Top. Appl. Earth Observations Remote Sens. 8(6), 2351–2360 (2015)CrossRef Zhou, Y., Peng, J., Chen, C.L.P.: Extreme learning machine with composite kernels for hyperspectral image classification. IEEE J. Sel. Top. Appl. Earth Observations Remote Sens. 8(6), 2351–2360 (2015)CrossRef
34.
Zurück zum Zitat Zhu, Z., et al.: Assessment of spectral, polarimetric, temporal, and spatial dimensions for urban and peri-urban land cover classification using Landsat and SAR data. Remote Sens. Environ. 117, 72–82 (2012)CrossRef Zhu, Z., et al.: Assessment of spectral, polarimetric, temporal, and spatial dimensions for urban and peri-urban land cover classification using Landsat and SAR data. Remote Sens. Environ. 117, 72–82 (2012)CrossRef
Metadaten
Titel
Efficient Deep Belief Network Based Hyperspectral Image Classification
verfasst von
Atif Mughees
Linmi Tao
Copyright-Jahr
2017
DOI
https://doi.org/10.1007/978-3-319-71598-8_31