ESTIMATION SPECIFICITY OF COMPLEX NOISE CHARACTERISTICS CONSIDER THE INTER-CHANNEL CORRELATION ON HYPERSPECTRAL IMAGES
Abstract
Keywords
Full Text:
PDF (Русский)References
Shovengerdt, R. A. Distantsionnoe zondirovanie. Modeli i metody obrabotki izobrazheniy [Remote Sensing. Models and Methods of Image Processing], Moskow, “Tekhnosfera” Publ., 2010. 560 p.
Popov, M., Stankevich, S., Markov, S. Integratsiya geterogennoy prostranstvennoy informatsii dlya resheniya zadach poiska nefti i gaza [Integration of heterogeneous spatial information in tasks of oil and gas search], Rossiyskiy nauchnyy elektronnyy zhurnal «Elektronnye biblioteki» – “Russian Digital Libraries”, 2013, vol. 16, no. 2. Available at: http://www.elbib.ru (accessed 14.11.2018).
Kerekes, J. P. Optical Sensor Technology, The SAGE Handbook of Remote Sensing, London, UK, SAGE Publications, 2009, pp. 95 – 107.
Christophe, E. Hyperspectral Data Compression Tradeoff in Optical Remote Sensing, Advances in Signal Processing and Exploitation Techniques. 8th ed, Springer; Berlin Heidelberg, 2011, pp. 9–29.
Bekhtin, Y. S. Adaptive wavelet codec for noisy image compression, Proceedings of the 9th East-West Design and Test Symposium, Sevastopol, Ukraine, September 2011, pp. 184–188.
Image Classification Techniques in Remote Sensing. Available at: https://gisgeography.com/image-classification-techniques-remote-sensing/ (accessed 1.10.2018).
Hu, Y., Chen, J., Pan, D., Hao, Z. Edge-guided image object detection in multiscale segmentation for high-resolution remotely sensed imagery, IEEE Transactions on Geoscience and Remote Sensing, 2016, vol. 54, no. 8, pp. 4702–4711.
Zhong, P., Wang, R. Multiple-spectral-band CRFs for denoising junk bands of hyperspectral imagery, IEEE Transactions on Geoscience and Remote Sensing, 2013, no. 51(4), pp. 2269–2275.
Meola, J., Eismann, M. T., Moses, R. L., Ash, J. N. Modeling and estimation of signal-dependent noise in hyperspectral imagery, Applied Optics, 2011, no. 50(21), pp. 3829–3846.
Colom, M., Lebrun, M., Buades, A., Morel, J. M. A non-parametric approach for the estimation of intensity-frequency dependent noise, IEEE International Conference on Image Processing (ICIP), Paris, France, 27–30 October 2014, pp. 4261–4265.
Goosens, B., Pizurica, A., Wilfried, P. Removal of Correlated Noise by Modeling the Signal of Interest in the Wavelet Domain, IEEE Transactions on Image Processing, 2009, vol. 18, issue 6, pp. 1 – 14.
Cocianu, C, Stan, A. Neural Architectures for Correlated Noise Removal in Image Processing, Mathematical Problems in Engineering, 2016, vol. 2016, article ID: 6153749, 14 p. Available at: https://www.hinda-wi.com/journals/mpe/2016/6153749/ (accessed 14.11.2018).
Liu, C., Szeliski, R., Kang, S. B., Zitnick, C. L., Freeman, W.T. Automatic estimation and removal of noise from a single image, IEEE Transactions on Pattern Analysis and Machine Intelligence, 2008, no. 30(2), pp. 299–314.
Gao, L., Du, Q., Zhang, B., Yang, W., Wu, Y. A comparative study on linear regression based noise estimation for hyperspectral imagery, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 2013, no. 6(2), pp. 488–498.
Jin, X., Xu, Z., Hirakawa, K. Noise parameter estimation for poisson corrupted images using variance stabilization transforms, IEEE Trans. Image Process., 2014, no. 23(3), pp. 1329 – 1339.
Savant, R. V., Pradhan, D. Estimation of noise parameters for captured image [Electronic Resource], IEEE International Conference on Engineering and Technology (ICETECH), March 17 – 18, Coimbature, India. Available at: https://ieeexplore.ieee.org/do-cument/7569405 (accessed 20.11.2018).
Abramova, V. V., Abramov, S. K., Lukin, V. V., Egiazarian, K. O., Astola, J. T. On required accuracy of mixed noise parameter estimation for image enhancement via denoising, EURASIP Journal on Image and Video Processing, 2014, no. 2014:3. Available at: http://jivp.eurasipjournals.com/con-tent/2014/1/3 (accessed 14.11.2018).
Airborne Visible/Infrared Imaging Spectrometer. Available at: http://aviris.jpl.nasa.gov (accessed 14.11.2018).
Green, R. O., Eastwood, M. L., Sarture, C. M., Chrien, T. G., Aronsson, M., Chippendale, B. J. Imaging spectroscopy and the airborne visible/infrared imaging spectrometer (AVIRIS), Remote Sensing of Environment, 1998, no. 65, pp. 227–248.
The EO-1 Hyperion Imaging Spectrometer. Available at: https://eo1.gsfc.nasa.gov/new/valida-tionRport/Technology/TRW_EO1%20Papers_Presentations/10.pdf. (accessed 14.11.2018).
Pearlman, J. S., Barry, P. S., Segal, C. C., Shepanski, J., Beiso, D., Carman, S. L. Hyperion, a space-based imaging spectrometer, IEEE Transactions on Geoscience and Remote Sensing, 2003, no. 41(6), pp. 1160–1173.
Abramova, V. V., Abramov, S. K., Lukin, V. V., Vozel, B., Chehdi, K. Using inter-channel correlation in blind evaluation of noise characteristics in multichannel remote sensing images, ERS International Congress, Berlin, Sept. 10-13, 2018, vol. 10004, article ID 1000408, 11 p.
Abramova, V. V., Abramov, S. K., Lukin, V. V. Iterative Method for Blind Evaluation of Mixed Noise Characteristics on Images, Information and Telecommunication Sciences, 2015, vol. 6, no. 1, pp. 8 – 14.
Abramova, V. A Blind Method for Additive Noise Variance Evaluation Based on Homogeneous Region Detection Using the Fourth Central Moment Analysis, Telecommunications and Radioengineering, 2015, no. 74(18), pp. 1651 – 1669.
Uss, M., Vozel, B., Lukin, V., Chehdi, K. Image Informative Maps for Component-wise Estimating Parameters of Signal-Dependent Noise, Journal of Electronic Imaging, 2013, vol. 22, no 1., Article ID: 013019, 7 p.
DOI: https://doi.org/10.32620/aktt.2018.6.13