A SURVEY ON IMAGE COMPRESSION TECHNIQUES
International Journal of Computer Science (IJCS) Published by SK Research Group of Companies (SKRGC)
Download this PDF format
Abstract
Due to the Advancements of multimedia and digital imaging has led to high quantity of data required to represent modern imagery. This requires large disk space for storage, and long time for transmission over computer networks, and these two are relatively expensive. These factors prove the need for images compression. Image compression addresses the problem of reducing the amount of space required to represent a digital image yielding a compact representation of an image, and thereby reducing the image storage/transmission time requirements. The key idea here is to remove redundancy of data presented within an image to reduce its size without affecting the essential information of it. In order to reduce the redundant information, there were a lot algorithms are developed and utilized, this paper describes the general applied mechanisms and schemes for image compression without losing information. Various lossless schemes are described in this paper and a combination of the lossless scheme is proposed for a better compression and a reduced reconstruction.
References
1) Image Compression Techniques: A Survey in Lossless and Lossy algorithms.
2) Hussain, Abir Jaafar, Ali Al-Fayadh, and Naeem Radi. "Image compression techniques: A survey in lossless and lossy algorithms." Neurocomputing 300 (2018): 44-69.
3) Yuan, Shuyun, and Jianbo Hu. "Research on image compression technology based on Huffman coding." Journal of Visual Communication and Image Representation 59 (2019): 33-38.
4) Mofreh, Amira, Tamer M. Barakat, and Amr M. Refaat. "A new lossless medical image compression technique using hybrid prediction model." Signal Processing: An International Journal (SPIJ) 10.3 (2016): 20.
5) Mandyam, G., Ahmed, N., & Magotra, N. (1997). Lossless Image Compression Using the Discrete Cosine Transform. Journal of Visual Communication and Image Representation, 8(1), 21-26.doi:10.1006/jvci.1997.0323
6) Al-Janabi, Ali Kadhim. "Efficient and simple scalable image compression algorithms." Ain Shams Engineering Journal(2019).
7) Törey?n, Behçet U?ur, et al. "Lossless hyperspectral image compression using wavelet transform based spectral decorrelation." 2015 7th International Conference on Recent Advances in Space Technologies (RAST). IEEE, 2015.
8) Badshah, Gran, et al. "Watermark compression in medical image watermarking using Lempel-Ziv-Welch (LZW) lossless compression technique." Journal of digital imaging 29.2 (2016): 216-225.
9) Thanki, Rohit M., and Ashish Kothari. "Classification in Data Compression." Hybrid and Advanced Compression Techniques for Medical Images. Springer, Cham, 2019. 17-29.
10) Thanki, Rohit M., and Ashish Kothari. Hybrid and Advanced Compression Techniques for Medical Images. Springer, 2019.
11) Fred, A. Lenin, et al. "Bat Optimization Based Vector Quantization Algorithm for Medical Image Compression." Nature Inspired Optimization Techniques for Image Processing Applications. Springer, Cham, 2019. 29-54.
12) Halder, Amiya, et al. "A Memory-Efficient Image Compression Method Using DWT Applied to Histogram-Based Block Optimization." Emerging Technologies in Data Mining and Information Security. Springer, Singapore, 2019. 287-295.
13) Kumar, R. Naveen, B. N. Jagadale, and J. S. Bhat. "A lossless image compression algorithm using wavelets and fractional Fourier transform." SN Applied Sciences 1.3 (2019): 266.
14) Xu, Weizhe, et al. "Discrete wavelet transform-based fast and high-efficient lossless intraframe compression algorithm for high-efficiency video coding." Journal of Electronic Imaging28.1 (2019): 013017.
15) Latha, P. Madhavee, and A. Annis Fathima. "Collective compression of images using averaging and transform coding." Measurement 135 (2019): 795-805.