References
- Kaur, B. Digital image and video compression techniques. Int. J. Emerging Technol. Adv. Eng., 2013, 3, 554–558.
- Wikipedia. Available www.wikipedia.com (accessed January 2014)..
- Ivanovici, M., Richard, N. and Fernandez-Maloigne, C. Towards video quality metrics based on colour fractal geometry. J. Image Video Process., 2010, 2010, 4.
- Punchihewa, A., Bailey, D. and Hodgson, R. Objective quality assessment of coded images: the development of new quality metrics., Proc. Internet, Telecommunication Conf. 2004, pp. 1–6.
- Uddin, M. N., Jebunnahar and Bashar, M. A. A comprehensive study of digital image processing for finding image quality dependencies. Int. J. Sci. Res. Publ., 2012, 2.
- LIVE Image Database. Available: http://live.ece.utexas.edu (accessed May 2010)..
- Brandao, T. and Queluz, M. P. No-reference PSNR estimation algorithm for H. 264 encoded video sequences., Prco. 16th European Signal Processing Conf. (EUSIPCO) 2008.
- Turaga, D. S., Chen, Y. and Caviedes, J. No reference PSNR estimation for compressed pictures. Signal Proces., 2004, 19, 173–184.
- Ichigaya, A., Kurozumi, M., Hara, N., Nishida, Y. and Nakasu, E. A method of estimating coding PSNR using quantized DCT coefficients. IEEE Trans. Circuits Syst. Video Technol., 2006, 16, 251–259.
- Dosselmann, R. and Yang, X. D. Existing and emerging image quality metrics., Canadian Conf. on ‘Electrical and computer engineering’ 2005, pp. 1906–1913.
- Meesters, L. and Martens, J. -B. A single-ended blockiness measure for JPEG-coded images. Signal Process., 2002, 82, 369–387.
- Karunasekera, S. A. and Kingsbury, N. G. A distortion measure for blocking artifacts in images based on human visual sensitivity. IEEE Trans. Image Process., 1995, 4, 713–724.
- Zhu, X. and Milanfar, P. A no-reference sharpness metric sensitive to blur and noise., Proc. Int. Workshop on ‘Quality of multimedia experience (QoMEx)’ 2009, pp. 64–69.
- Feng, X. and Allebach, J. P. Measurement of ringing artifacts in JPEG images. Electron. Imaging, 2006, 2006, 60760A–60760A-10.
- Qadri, K. and Ghanbari, M. M. The impact of spatial masking in image quality meters. Global J. Comput. Sci. Technol., 1965, 11.
- Seshadrinathan, K., Soundararajan, R., Bovik, A. C. and Cormack, L. K. Study of subjective and objective quality assessment of video. IEEE Trans. Image Process., 2010, 19, 1427–1441.
- Gastaldo, P. and Redi, J. A. Machine learning solutions for objective visual quality assessment., Proc. 6th Int. Workshop on ‘Video processing and quality metrics for consumer electronics (VPQM)’ 2012..
- Wang, Z. and Simoncelli, E. P. Reduced-reference image quality assessment using a wavelet-domain natural image statistic model. Electron. Imaging, 2005, 2005, 149–159.
- Li, Q. and Wang, Z. Reduced-reference image quality assessment using divisive normalization-based image representation. IEEE Trans. J. Sel. Top. Signal Process., 2009, 3, 202–211.
- Mittal, A., Moorthy, A. K. and Bovik, A. C. No-reference image quality assessment in the spatial domain. IEEE Trans. Image Process., 2012, 21, 4695–4708.
- Gabarda, S. and Cristóbal, G. Blind image quality assessment through anisotropy. JOSA A, 2007, 24A, B42–B51.
- Qadri, M. T., Tan, K. and Ghanbari, M. Frequency domain blockiness and blurriness meter for image quality assessment. Int. J. Image Process., 2011, 5, 352.
- Lin, W. and Jay Kuo, C. -C. Perceptual visual quality metrics: A survey. J. Visual Commun. Image Represent., 2011, 22, 297–312.
- Marziliano, P., Dufaux, F., Winkler, S. and Ebrahimi, T. Perceptual blur and ringing metrics: application to JPEG2000. Signal Process. Image Commun., 2004, 19, 163–172.
- Chetouani, A., Beghdadi, A., Chen, S. and Mostafaoui, G. A novel free reference image quality metric using neural network approach., Proc. Int. Workshop on ‘Video processing and quality metrics for consumer electronics’ 2010, pp. 1–4.
- Maini, R. and Aggarwal, H. Study and comparison of various image edge detection techniques. Int. J. Image Process., 2009, 3, 1–11.