Mhp Lossless Image Compression Coding Scheme for and Efficient Compressed Image Transmission Through Wireless Networks

International Journal of Computer Trends and Technology (IJCTT)          
© 2018 by IJCTT Journal
Volume-55 Number-1
Year of Publication : 2018
Authors : Dr.P.Suresh Babu
DOI :  10.14445/22312803/IJCTT-V55P107


Dr.P.Suresh Babu "Mhp Lossless Image Compression Coding Scheme for and Efficient Compressed Image Transmission Through Wireless Networks". International Journal of Computer Trends and Technology (IJCTT) V55(1):36-40, January 2018. ISSN:2231-2803. Published by Seventh Sense Research Group.

Abstract -
In the modern world of gadget’s era huge of volume data is generated in the forms of multimedia data. Generated data in the form of images need more space for storage and takes more bandwidth while transmitted across the networks. With help of Image compression methods the image size can be reduced. With reduction of image size with compression process helps to transmit the image across the networks in a faster manner with lesser bandwidth. In this work, a novel image compression method is proposed using Modified Hierarchal Predication (MHP) color image coding scheme. Once compression is done it passed through the various wireless notebooks such as WLAN, WiMax and Wi-Fi to verify the effectiveness of the compression. Proposed work MHP gives much better result than the existing approach.

[1] Gregory K. Wallace, Maynard and Massachusetts, The JPEG Still Picture Compression Standard, in proc IEEE transactions, 2001.
[2] Marcelo J. Weinberger and Gadiel Seroussi, The LOCO-I Lossless Image Compression Algorithm: Principles and Standardization into JPEG-LS, In proc IEEE transactions on Image Processing, vol.9, issue.8, 2000.
[3] M. J. Weinberger, G. Seroussi, and G. Sapiro, “LOCO-I: A low complexity lossless image compression algorithm.” ISO/ IEC JTC1 / SC29 / WG1 document N203, July 1995.
[4] Seyun Kim and Nam Ik Cho, Hierarchical Prediction and Context Adaptive Coding for Lossless Color Image Compression, In proc IEEE Transactions on Image Processing, Vol. 23, No. 1, January 2014.
[5] Aguilera, P. Comparison of different image compression formats. Wisconsin College of Engineering, ECE, 533. 2006
[6] Lin, C. C., & Hwang, Y. T. An efficient lossless compression scheme for hyperspectral images using two-stage prediction. Geoscience and Remote Sensing Letters, IEEE, 7(3), 558-562, 2010.
[7] Doukas, C., & Maglogiannis, I. (2008). Adaptive transmission of medical image and video using scalable coding and context-aware wireless medical networks. EURASIP Journal on Wireless Communications and Networking, 2008, 25.
[8] Martini, M. G., & Hewage, C. T. Flexible macroblock ordering for context-aware ultrasound video transmission over mobile WiMAX. International journal of telemedicine and applications, 2010, 6.
[9] Grangetto, M., Magli, E., & Olmo, G. Ensuring quality of service for image transmission: hybrid loss protection. Image Processing, IEEE Transactions on, 13(6), 751-757, 2004.
[10] Muhammad Aamer, Performance Analysis of WiMAX Physical Layer under Scrambling Security Threat Using MATLAB Simulation, International Journal of Computer Science and Telecommunications Vol. 4, September 2013.

Modified and Block based Hierarchical Prediction, Wireless Network, WLAN, WiMax, Wi-Fi