MODIFICATION OF TEXTURE DETECTION METHOD USING FEATURE AGREGATING
Abstract
Keywords
Full Text:
PDF (Русский)References
Pratt, W. K. Digital Image Processing. Fourth Edition. N. Y., Wiley-Interscience Publ., USA, 2007. 1429 p.
Haralick, R. M. Textural features for image classification. IEEE Trans. Syst., Man, Cybern., vol. 3, no. 6, 1973, pp. 610-621.
Malik, J., Belongie, S., Leung, T., Shi, J. Contour and texture analysis for image segmentation. IJCV, vol. 7, 2001, pp. 27-31.
Micusik, B., Hanbury, A. Supervised texture detection in images. Proceedings of 11-th International Conference on Computer Analysis of Images and Patterns, Versailles, France, Sept. 2005, pp. 441-448.
Bevz, E. G. Algoritmy segmentacii dlja zadach teksturnogo analiza s primeneniem metoda sintaksicheskogo opisanija tekstur [Segmentation algorithms for texture analysis tasks using the syntax description of the method of textures]. Doklady Belorusskogo gosudarstvennogo universiteta informatiki i radiojelektroniki, Belorussia, 2011, no. 8 (62), pp. 9-13.
Lukin, V. V., Tsymbal, O. V., Ponomarenko, N. N., Egiazarian, K.O. and Astola, J. T. Image processing with texture feature preservation by three-state locally adaptive filter. Image and Signal Processing for Remote Sensing IX, Barcelona, Spain, vol. 5238 of SPIE Proceedings, September 2003, pp. 120-131.
Wang, Xiang-Yang., Zhang, Bei-Bei., Yang, Hong-Ying. Content-based image retrieval by integrating color and texture features, Multimed Tools Appl, vol. 68, 2014, pp. 545-569.
Krylov, V. N., Poljakova, M.V. Chastotno-detektornyj metod teksturnoj segmentacii izobrazhenij [Frequency detection method of texture image segmentation]. AAJeKS Informacionno-izmeritel'nye sistemy, 2005, no. 2(16), pp. 40-46.
Hayman, E., Caputo, B., Fritz, M., Eklundh, J. On the significance of real-world conditions for material classification, Computer Vision: proc. 8th European Conf. on Computer Vision. Prague, vol. 4, 2004, pp. 253-266.
Popescu, Anca A., Gavat, Inge. Contextual Descriptors for Scene Classes in Very High Resolution SAR Images, IEEE Geoscience and remote sensing letters. vol. 9, 2012, pp. 80-84.
Partio, M. Applying texture and color features to natural image retrieval. Proc. Finnish Signal Processing Symposium (FINSIG ’03), Tampere, Finland, May 2003, pp. 199-203.
Nunes, J. C., Niang, O., Bouaoune, Y., Delechelle, E., Bunel, Ph. Texture analysis based on the bidimensional empirical mode decomposition with gray-level co-occurrence models. Proc. 7th International Symposium on Signal Processing and Its Applications, Paris, France, vol. 2, July 2003, pp. 633-635.
Yoshida, Y., Wu, Y. Classification of rotated and scaled textured images using invariants based on spectral moments. IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences, vol. 81, 1998, pp. 1661-1666.
Rubel, A., Lukin, V., Pogrebniak, O. Efficiency of DCT-based denoising techniques applied to texture images. Proceedings of MCPR, Cancun, Mexico, LNCS 8495, June 2014, pp. 111-120.
Tsymbal, O. V., Lukin, V. V., Ponomarenko, N. N., Zelensky, A. A., Egiazarian, K. O., Astola, J. T. Three-state Locally Adaptive Texture Preserving Filter for Radar and Optical Image Processing. EURASIP Journal on Applied Signal Processing, no. 8, May 2005, pp. 1185-1204.
Aiazzi, B., Alparone, L., Baronti, S., Carla, R. Adaptive texture-preserving filtering of multitemporal ERS-1 SAR images. Proc. IEEE International Geoscience and Remote Sensing Symposium (IGARSS ’97), Singapore, vol. 4, August 1997, pp. 2066-2068.
Naumenko, A. V., Krivenko, S. S., Zrjahov, M. S., Lukin,V. V. Obnaruzhenie teksturnyh uchastkov na izobrazhenijah pri nalichii pomeh klassifikatorom na osnove nejroseti, Radіoelektronnі і komp’juternі sistemi, vol. 1, 2016, pp. 35-44.
Naumenko, A., Krivenko, S., Ponomarenko, N., Lukin, V., Zelensky, A. Texture Detection in Noisy Images by Combining Several Local Parameters, Proceedings of the Conference Problems of Infocommunications. Science and Technology, Kharkov, Ukraine, October 2015, pp. 230-233.
DOI: https://doi.org/10.32620/reks.2017.1.02
Refbacks
- There are currently no refbacks.