Browse > Article
http://dx.doi.org/10.3837/tiis.2020.08.008

Lossless Compression for Hyperspectral Images based on Adaptive Band Selection and Adaptive Predictor Selection  

Zhu, Fuquan (College of Geophysics, Chengdu University of Technology)
Wang, Huajun (College of Geophysics, Chengdu University of Technology)
Yang, Liping (General Education Department, Sichuan Police College)
Li, Changguo (College of Fundamental Education, Sichuan Normal University)
Wang, Sen (Technical Center of Shanghai Shentong Metro Group Co., Ltd)
Publication Information
KSII Transactions on Internet and Information Systems (TIIS) / v.14, no.8, 2020 , pp. 3295-3311 More about this Journal
Abstract
With the wide application of hyperspectral images, it becomes more and more important to compress hyperspectral images. Conventional recursive least squares (CRLS) algorithm has great potentiality in lossless compression for hyperspectral images. The prediction accuracy of CRLS is closely related to the correlations between the reference bands and the current band, and the similarity between pixels in prediction context. According to this characteristic, we present an improved CRLS with adaptive band selection and adaptive predictor selection (CRLS-ABS-APS). Firstly, a spectral vector correlation coefficient-based k-means clustering algorithm is employed to generate clustering map. Afterwards, an adaptive band selection strategy based on inter-spectral correlation coefficient is adopted to select the reference bands for each band. Then, an adaptive predictor selection strategy based on clustering map is adopted to select the optimal CRLS predictor for each pixel. In addition, a double snake scan mode is used to further improve the similarity of prediction context, and a recursive average estimation method is used to accelerate the local average calculation. Finally, the prediction residuals are entropy encoded by arithmetic encoder. Experiments on the Airborne Visible Infrared Imaging Spectrometer (AVIRIS) 2006 data set show that the CRLS-ABS-APS achieves average bit rates of 3.28 bpp, 5.55 bpp and 2.39 bpp on the three subsets, respectively. The results indicate that the CRLS-ABS-APS effectively improves the compression effect with lower computation complexity, and outperforms to the current state-of-the-art methods.
Keywords
hyperspectral image lossless compression; conventional recursive least squares; k-means clustering; adaptive band selection; adaptive predictor selection;
Citations & Related Records
Times Cited By KSCI : 2  (Citation Analysis)
연도 인용수 순위
1 X. Yu, R. Wang, B. Liu and A. Yu, "Salient feature extraction for hyperspectral image classification," Remote Sensing Letters, vol. 10, no. 6, pp. 553-562, 2019.   DOI
2 Y. Liu, G. Gao and Y. Gu, "Tensor matched subspace detector for hyperspectral target detection," IEEE Transactions on Geoscience and Remote Sensing, vol. 55, no. 4, pp. 1967-1974, April, 2017.   DOI
3 Jet Propulsion Laboratory, NASA Airborne visible infrared imaging spectrometer website. [Online]. Available: http://aviris.jpl.nasa.gov
4 W. Fu, S. Li, L. Fang and J. A. Benediktsson, "Adaptive spectral-spatial compression of hyperspectral image with sparse representation," IEEE Transactions on Geoscience and Remote Sensing, vol. 55, no. 2, pp. 671-682, February, 2017.   DOI
5 R. Nagendran and A. Vasuki, "Hyperspectral image compression using hybrid transform with different wavelet-based transform coding," International Journal of Wavelets Multiresolution & Information Processing, vol. 18, no. 1, pp. 481-484, 2020.
6 S. Alvarez-Cortes, N. Amrani and J. Serra-Sagrista, "Low complexity regression wavelet analysis variants for hyperspectral data lossless compression," International Journal of Remote Sensing, vol. 39, no. 7, pp. 1971-2000, July, 2018.   DOI
7 B. Huang, A. Ahuja and M.D. Goldberg, "Fast precomputed VQ with optimal bit allocation for lossless compression of ultraspectral sounder data," in Proc. of Data Compression Conference, 2005. Proceedings. DCC 2005 IEEE, 2006.
8 X. Wu and N. Memon, "Context-based adaptive, lossless image coding," IEEE Transactions on Communications, vol. 45, no. 4, pp. 437-444, April, 1997.   DOI
9 M. Weinberger, G. Seroussi and G. Sapiro, "The LOCO-I lossless image compression algorithm: Principles and standardization into JPEG-LS," IEEE Transacions on Image Processing, vol. 9, no. 8, pp. 1309-1324, August, 2000.   DOI
10 R. Pizzolante and B. Carpentieri, "Visualization, band ordering and compression of hyperspectral Images," Algorithms, vol. 5, no. 1, pp. 76-97, 2012.   DOI
11 A. S. Mamatha, Vipula Singh and Rajath Kumar M P, "Significance of preprocessing and its impact on lossless hyperspectral image compression," The Imaging Science Journal, vol. 65, no. 5, pp. 270-281, May, 2017.   DOI
12 J. Mielikainen and P. Toivanen, "Clustered DPCM for the lossless compression of hyperspectral images," IEEE Transactions on Geoscience and Remote Sensing, vol. 41, no. 12, pp. 2943-2946 , December, 2003.   DOI
13 J. Mielikainen, "Lossless compression of hyperspectral images using lookup tables," IEEE Signal Processing Letters, vol. 13, no. 3, pp. 157-160, March, 2006.   DOI
14 B. Huang and Y. Sriraja, "Lossless compression of hyperspectral imagery via lookup tables with predictor selection," in Proc. of SPIE, vol. 6365, pp. 63650L-1-63650L-8, September 2006.   DOI
15 J. Mielikainen and P. Toivanen, "Lossless compression of hyperspectral images using a quantized index to lookup tables," IEEE Geoscience and Remote Sensing Letters, vol. 5, no. 3, pp. 474-478 July. 2008.   DOI
16 J. Mielikainen and B. Huang, "Lossless compression of hyperspectral images using clustered linear prediction with adaptive prediction length," IEEE Geoscience and Remote Sensing Letters, vol. 9, no. 6, pp. 1118-1121, November, 2012.   DOI
17 J. Wu, W. Kong, J. Mielikainen and B. Huang, "Lossless compression of hyperspectral imagery via clustered differential pulse code modulation with removal of local spectral outliers," IEEE Signal Processing Letters, vol. 22, no. 12, pp. 2194-2198, December, 2015.   DOI
18 J. Luo, J. Wu, S. Zhao, et al, "Lossless compression for hyperspectral image using deep recurrent neural networks," International Journal of Machine Learning & Cybernetics, vol. 10, pp. 2619-2629, 2019.   DOI
19 C. Li, "Parallel Implementation of the Recursive Least Square for Hyperspectral Image Compression on GPUs," KSII Transactions on Internet and Information Systems, vol. 11, no. 7, pp. 3543-3557, July. 2017.   DOI
20 M. I. Afjal, M. A. Mamun and M. P. Uddin, "Band reordering heuristics for lossless satellite image compression with 3D-CALIC and CCSDS," Journal of Visual Communication and Image Representation, vol. 59, pp. 514-526, 2019.   DOI
21 J. Li, J. Wu and G. Jeon, "GPU acceleration of clustered DPCM for lossless compression of hyperspectral images," IEEE Transactions on Industrial Informatics, vol. 16, no. 5, pp. 2906-2916, May, 2019.   DOI
22 CCSDS CWE, CCSDS Collaborative work environment website. [Online]. Available: https://cwe.ccsds.org
23 J. Song, Z. Zhang and X. Chen, "Lossless compression of hyperspectral imagery via RLS filter," Electronics Letters, vol. 49, no. 16, pp. 992-993, August, 2013.   DOI
24 B. Carpentieri, A. Castiglione, A. De Santis, et al, "One-pass lossless data hiding and compression of remote sensing data," Future generation computer systems, vol. 90, pp. 222-239, Jan, 2019.   DOI
25 M. Klimesh, "Low-complexity adaptive lossless compression of hyperspectral imagery," in Proc. of SPIE, vol. 6300, pp. 63000N-1-63000N-9, September. 2006.
26 D. Bascones, C. Gonzalez and D. Mozos, "FPGA implementation of the CCSDS 1.2.3 standard for real-time hyperspectral lossless compression," IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, vol. 11, no. 4, pp. 1158-1165, April, 2018.   DOI
27 H. Shen, Z. Jiang and W. D. Pan, "Efficient lossless compression of multitemporal hyperspectral image data," Journal of Imaging, vol. 4, no. 12, pp. 1-15, December, 2018.
28 C. C. Lin and Y. T. Hwang, "An efficient lossless compression scheme for hyperspectral images using two-stage prediction," IEEE Geoscience and Remote Sensing Letters, vol. 7, no. 3, pp. 558-562, July. 2010.   DOI
29 J. Song, L. Zhou, C. Deng and J. An, "Lossless compression of hyperspectral imagery using a fast adaptive length prediction RLS filter," Remote Sensing Letters, vol. 10, no. 4, pp. 401-410, 2019.   DOI
30 F. Gao and S. Guo. "Lossless compression of hyperspectral images using conventional recursive least squares predictor with adaptive prediction bands," Journal of Applied Remote Sensing, vol. 10, no. 1, pp. 1-9, February, 2016.
31 A. C. Karaca and M. K. Gullu, "Lossless hyperspectral image compression using bimodal conventional recursive least-squares," Remote Sensing Letters, vol. 9, no. 1, pp. 31-40, 2018.   DOI
32 F. Gao, C. Sun, Q. Shao and S. Guo, "Lossless compression of hyperspectral images using k-means clustering and conventional recursive least-squares predictor," Journal of Electronics & Information Technology, vol.38, no. 11, pp. 2709-2714, 2016.
33 A. C. Karaca and M. K. Gullu, "Superpixel based conventional recursive least-squares method for lossless compression of hyperspectral images," Multidimensional Systems and Signal Processing, vol. 30, pp. 903-919, 2019.   DOI