A Pixel Based Method for Image Compression
Main Article Content
Abstract
The basic solution to overcome difficult issues related to huge size of digital images is to recruited image compression techniques to reduce images size for efficient storage and fast transmission. In this paper, a new scheme of pixel base technique is proposed for grayscale image compression that implicitly utilize hybrid techniques of spatial modelling base technique of minimum residual along with transformed technique of Discrete Wavelet Transform (DWT) that also impels mixed between lossless and lossy techniques to ensure highly performance in terms of compression ratio and quality. The proposed technique has been applied on a set of standard test images and the results obtained are significantly encourage compared with Joint Photographic Experts Group (JPEG).
Article Details

This work is licensed under a Creative Commons Attribution 4.0 International License.
Tikrit Journal of Pure Science is licensed under the Creative Commons Attribution 4.0 International License, which allows users to copy, create extracts, abstracts, and new works from the article, alter and revise the article, and make commercial use of the article (including reuse and/or resale of the article by commercial entities), provided the user gives appropriate credit (with a link to the formal publication through the relevant DOI), provides a link to the license, indicates if changes were made, and the licensor is not represented as endorsing the use made of the work. The authors hold the copyright for their published work on the Tikrit J. Pure Sci. website, while Tikrit J. Pure Sci. is responsible for appreciate citation of their work, which is released under CC-BY-4.0, enabling the unrestricted use, distribution, and reproduction of an article in any medium, provided that the original work is properly cited.
References
[1] Kaur, N. (2013). A Review of Image Compression using Pixel Correlation and Image Decomposition with Results. International Journal of Application of Innovation in Engineering and Management, 2(1):182-186.
[2] Sayood, K. (2005). Introduction to Data Compression, third ed., MorganKaufmann, 500 Sansome Street, Suite 400, San Francisco, CA 94111.
[3] Ghanbari M. (2003). Image Compression to Advanced Video Coding, Institute of Engineering and Technology, London, UK.
[4] Gonzalez, R. C. and Woods, R. E. (2002). Image Segmentation. Digital image processing, 2(30): 33-390
[5] Ghadah, K. (212). Intra and Inter Frame Compression for Video Streaming, Ph.D. thesis, Exeter University, UK. [6] Gupta, M., and Garg, K. (2012). Analysis of Image Compression Algorithm using DCT. International Journal of Engineering Research and Applications (IJERA), 2(1): 515-521.
[7] Xing-Yuan, W., Yuan-Xing, W., and Jiao-Jiao, Y. (2011). An Improved Fast Fractal Image Compression using Spatial Texture Correlation. Chinese Physics B, 20(10), 104202(1-11).
[8] Raid, M., and et al. (2014). JPEG Image Compression using Discrete Cosine Transform- International Journal of Computer Science & Engineering Survey, 5(2): 39-47. [9] Deepthi, K. and Ramprakash, R. (2013). Design and Implementation of JPEG Image Compression and Decompression. International Journal of Innovations in Engineering and Technology (IJIET), 2(1): 90-98.
[10] Ghadah, K. and Fadhil, S. (2017). Image Compression based on Fixed Predictor Multiresolution Thresholding of Linear Polynomial Near lossless Techniques. Journal of Al-Qadisiya for computer science and mathematics, 9(2): 35-44.
[11] Ghadah, K. and Dagher, M. (2018). A Fixed Predictor Polynomial Coding for Image Compression.
Higher diploma dissertation, College of Science University of Baghdad.Iraq. [12] Ghadah, K. and Khalaf, H. (2020). Hierarchical Fixed Prediction of Mixed based for Medical Image Compression. Higher diploma dissertation, College of Science University of Baghdad. Iraq. [13] Firas A. Jassim and Hind E. Qassim (2012). Five modulus method for image compression, Signal and Image Processing: An International Journal (SIPIJ). 3(5):19-28. [14] Shantagiri, Pralhadrao V., and K. N. Saravanan. (2013). Pixel Size Reduction Loss-less Image Compression Algorithm. International Journal of Computer Science and Information Technology 5(2):87-95.
[15] Narmatha, C., P. Manimegalai, and S. Manimurugan. (2017). A LS-Compression Scheme for Grayscale Images using Pixel based Technique. International Conference on Innovations in Green Energy and Healthcare Technologies (IGEHT). IEEE, pp:1-5.
[16] Tomar, Rime Raj Singh, and Kapil Jain (2015). Lossless Image Compression using Differential Pulse Code Modulation and its Application. International Conference on Computational Intelligence and Communication Networks (CICN). IEEE , pp:397-400. [17] Gashnikov, V. (2017). DPCM with an Adaptive Extrapolator for Image Compression. 3rd International conference on Information Technology and Nanotechnology, Samara, Russia.: 41(5) :72-77
[18] George, L. E., and Ghadah, K. (2015). Image Compression based on Non-Linear Polynomial Prediction Model. Int. J. Computer. Sci. Mob. Computer, 4(8): 91-97.
[19] Sara M., (2008). Discrete Cosine Transform to Encoding Approximation wavelet Subband. MSc. thesis, Al-Nahrain University, Collage of Science. Iraq. [20] Latha, P. and Fathima, A. (2019). Collective Compression of Images using Averaging and Transform Coding. Measurement, 135:795-805.