Date of Publication :7th May 2016
Abstract: Image compression technique is widely used in multimedia applications such as image, video, audio data and medical field. Image compression aims to reduce the redundancy of an image data and reduce the storage space of an image. Different image compression techniques were proposed to achieve high compression ratios and high image qualities in low computation time. This document presents the review of various lossless and lossy compression techniques.
Reference :
-
[1]. Charles Alexander Smith, “A Survey of Various Data Compression Techniques”, In April 2010.
[2]. Shashikala, Melwin, Y Arunodayan Sam Solomon, M..N. Nachappa, “A Survey Of Compression Techniques.”, in International Journal Of Research and Engineering, Volume 2, Issue 1, March 2013.
[3]. Lisa A S, “The Mathematical Foundation of Image Compression” The University of North Carolina at Wilmington, M.Sc Thesis May 2000.
[4]. Sonal, Dinesh Kumar, “A Study of Various Image Compression Techniques ”, pp. 1-5.
[5]. Tzong-Jer Chen and Keh-Shih Chuang, “A Pseudo Lossless Image Compression Method”, IEEE Conference on Image and Signal processing pp. pp. 610-615, October,2010.
[6]. Mridul Kumar Mathur, Seema Loonker and Dr. Dheeraj Saxena “Lossless Huffman Coding Technique For Image Compression And Reconstruction Using Binary Trees”, IJCTA, pp. 76-79, 2012.
[7]. Jagadish H. Pujar and Lohit M. Kadlaskar, “A New Lossless Method Of Image Compression and Decompression Using Huffman Coding Techniques”, JATIT, pp. 18-22, 2012.
[8]. V.K Padmaja and Dr. B. Chandrasekhar, “Literature Review of Image Compression Algorithm ”, IJSER, Volume 3, pp. 1-6, 2012.
[9]. Athira B. Kaimal, S. Manimurugan , C. S. C. Devadass, “Image Compression Techniques: A Survey”, In International Journal of Engineering Inventions, Volume 2, Issue 4,February 2013.
[10]. Singh A. and Gahlawa M. “IMAGE COMPRESSION AND ITS VARIOUS” International Journal of Advanced Research in Computer Science and Software Engineering. Volume 3, Issue 6, June 2013.
[11]. Grewal R. K. and Randhawa N.“IMAGE COMPRESSION USING DISCRETE COSINE TRANSFORM & DISCRETE WAVELET TRANSFORM” International Journal of Computing & Business Research ISSN (Online): 2229-6166.
[12]. Manisha Singh, Agam Das Goswami, “Image CompressionTechnique Using Hybrid Discrete Cosine Transform and Discrete Wavelet Transform Method”, in International Journal of Advanced Research in Computer Science and Software Engineering, Volume 2, Issue 20, October 2012.
[13]. “ Digital Image Processing Using MATLAB”: Rafael C . Gonzalez , Richard E . Woods , Steven L . Eddins
[14]. M. Antonini et al. “Image Coding Using Wavelet Transform.”,IEEE Trans. Image Processing, pages 205- 220, April 1992.
[15]. S. G. Mallat. “A Theory for Multi resolution Signal Decomposition: The Wavelet Representation”, In IEEE Transactions on pattern analysis and machine intelligence, Vol. 11, No. 7, pages 674-693, July 1989.
[16]. E. J. Candes and M. B. Wakin, “An introduction to compressive sampling”, IEEE Signal Processing. Magazine, vol. 25, pp. 21-30, 2008. [17]. R. Baraniuk, “Compressive sensing”, IEEE Signal Processing. Magazine, vol. 24, pp. 118-121, 2007.
[18]. M. H. Asghari and B. Jalali, “Anamorphic transformation and its application to time bandwidth compression”, Appl. Opt., vol. 52, pp. 6735-6743, 2013.
[19]. B. Jalali and M. H. Asghari, “The anamorphic stretch transform: Putting the squeeze on big data”, Opt. Photon. News, vol. 25, pp. 24-31, 2014.
[20]. M. H. Asghari and B. Jalali, “Experimental demonstration of optical real-time data compression”, Appl. Phys. Lett., vol. 104, no. 111101, pp. 1-4, 2014.
[21]. K. Goda, A. Ayazi, D. R. Gossett, J. Sadasivam, C. K. Lonappan, E. Sollier, A. M. Fard, S. C. Hur, J. Adam, C. Murray, C. Wang, N. Brack- bill, D. Di Carlo, and B. Jalali, “High throughput single micro particle imaging flow analyzer”, Proc. Nat. Acad. Sci., vol. 109, pp. 11630- 11635, 2012.
[22]. D. R. Solli, C. Ropers, P. Koonath, and B. Jalali, “Optical rogue waves Nature”, vol. 450, pp. 1054-1057, 2007.