References


[1] P. C. Teo and D. J. Heeger, Perceptual image distortion, in Proc. IEEE Int. Conf. Image Processing, pp. 982–986, 1994.

[2] M. P. Eckert and A. P. Bradley, Perceptual quality metrics applied to still image compression, Signal Processing, vol. 70, pp. 177–200, Nov. 1998.

[3] A. M. Eskicioglu and P. S. Fisher, Image quality measures and their performance, IEEE Trans. Communications, vol. 43, pp. 2959–2965, Dec. 1995.

[4] B. Girod, What's wrong with mean-squared error, in Digital Images and Human Vision, A. B. Watson, ed., pp. 207–220, MIT Press, 1993.

[5] S. Winkler, A perceputal distortion metric for digital color video, Proc. SPIE, vol. 3644, pp. 175–184, 1999.

[6] Y. K. Lai and C.-C. J. Kuo, A Haar wavelet approach to compressed image quality measurement, Journal of Visual Communication and Image Understanding, vol. 11, pp. 17–40, Mar. 2000.

[7] Z. Wang and A. C. Bovik, A universal image quality index, IEEE Signal Processing Letters, vol. 9, no. 3, pp. 81–84, March 2002.

[8] Z. Wang,A. C. Bovik and L. Lu, Why is image quality assessment so difficult? Proc. IEEE Int. Conf. Acoustics, Speech, and Signal Proc., vol. 4, pp. 3313–3316, May 2002.

[9] J.-B. Martens and L. Meesters, Image dissimilarity, Signal Processing, vol. 70, pp. 1164–1175, Aug. 1997.

[10] VQEG, Final report from the video quality experts group on the validation of objective models of video quality assessment, http://www.vqeg.org/, Mar. 2000.

[11] P. Corriveau, et al., Video quality experts group: Current results and future directions, Proc. SPIE Visual Comm. and Image Processing, vol. 4067, June 2000.

[12] J. L. Mannos and D. J. Sakrison, The effects of a visual fidelity criterion on the encoding of images, IEEE Trans. Information Theory, vol. 4, pp. 525–536, 1974.

[13] W. S. Geisler and M. S. Banks, Visual performance, in Handbook of Optics (M. Bass, ed.), McGraw-Hill, 1995.

[14] B. A. Wandell, Foundations of Vision, Sinauer Associates, Inc., 1995.

[15] L. K. Cormack, Computational models, of early human vision, in Handbook of Image and Video Processing (A. Bovik, ed.), Academic Press, May 2000.

[16] A. C. Bovik,M. Clark, and W. S. Geisler, Multichannel texture analysis using localized spatial filters, IEEE Trans. Pattern Analysis and Machine Intelligence, vol. 12, pp. 55–73, Jan. 1990.

[17] J. Lubin, The use of psychophysical data and models in the analysis of display system performance, in Digital Images and Human Vision (A. B. Watson, ed.), pp. 163–178, Cambridge, Massachusetts: The MIT Press, 1993.

[18] J. Lubin, A visual discrimination model for image system design and evaluation, in Visual Models for Target Detection and Recognition, E. Peli, ed., pp. 207–220, Singapore: World Scientific Publisher, 1995.

[19] S. Lee,M. S. Pattichis, and A. C. Bovik, Foveated video quality assessment, IEEE Trans. Multimedia, vol. 4, pp. 129–132, Mar. 2002.

[20] Z. Wang and A. C. Bovik, Embedded foveation image coding, IEEE Trans. Image Processing, vol. 10, pp. 1397–1410, Oct. 2001.

[21] C. J. van den Branden Lambrecht, Perceptual models and architectures for video coding applications, PhD thesis, Swiss Federal Institute of Technology, Aug. 1996.

[22] C. J. van den Branden Lambrecht, A working spatio-temporal model of the human visual system for image restoration and quality assessment applications, in Proc. IEEE Int. Conf. Acoust., Speech, and Signal Processing, pp. 2291–2294, 1996.

[23] C. J. van den Branden Lambrecht and O. Verscheure, Perceptual quality measure using a spatio-temporal model of the human visual system, in Proc. SPIE, vol. 2668, (San Jose, LA), pp. 450461, 1996.

[24] A. B. Watson,J. Hu, and J. F. III. McGowan, DVQ: A digital video quality metric based on human vision, Journal of Electronic Imaging, vol. 10, no. 1, pp. 20–29, 2001.

[25] P. C. Teo and D. J. Heeger, Perceptual image distortion, in Proc. SPIE, vol. 2179, pp. 127–141, 1994.

[26] E. Peli, Contrast in complex images, Journal of Optical Society of America, vol. 7, pp. 2032–2040, Oct. 1990.

[27] A. B. Watson, The cortex transform: rapid computation of simulated neural images, Computer Vision, Graphics, and Image Processing, vol. 39, pp. 311–327, 1987.

[28] S. Daly, The visible difference predictor: An algorithm for the assessment of image fidelity, in Proc. SPIE, vol. 1616, pp. 2–15, 1992.

[29] S. Daly, The visible difference predictor: An algorithm for the assessment of image fidelity, in Digital Images and Human Vision (A. B. Watson, ed.) pp. 179–206, Cambridage, Massachusetts: The MIT Press, 1993.

[30] D. J. Heeger and T. C. Teo, A model of perceptual image fidelity, in Proc. IEEE Int. Conf. Image Proc., pp. 343–345, 1995.

[31] C. J. van den Branden Lambrecht and O. Verscheure, Perceptual quality measure using a spatio-temporal model of the human visual system, in Proc. SPIE, vol. 2668, (San Jose, LA), pp. 450461, 1996.

[32] C. J. van den Branden Lambrecht,D. M. Costantini,G. L. Sicuranza, and M. Kunt, Quality assessment of motion rendition in video coding, IEEE Trans. Circuits and Systems for Video Tech., vol. 9, pp. 766–782. Aug. 1999.

[33] A. B. Watson and J. A. Solomon, Model of visual contrast gain control and pattern masking, Journal of Optical Society of America, vol. 14, no. 9, pp. 2379–2391, 1997.

[34] W. Xu and G. Hauske, Picture quality evaluation based on error segmentation, Proc. SPIE, vol. 2308, pp. 1454–1465, 1994.

[35] W. Osberger,N. Bergmann, and A. Maeder, An automatic image quality assessment technique incorporating high level perceptual factors, in Proc. IEEE Int. Conf. Image Proc., pp. 414–418, 1998.

[36] T. N. Pappas and R. J. Safranek, Perceptual criteria for image quality evaluation, in Handbook of Image and Video Processing (A. Bovik, ed.), Academic Press, May 2000.

[37] P. J. Burt and E. H. Adelson, The Laplacian pyramid as a compact image code, IEEE Trans. Communications, vol. 31, pp. 532–540, Apr. 1983.

[38] W. T. Freeman and E. H. Adelson, The design and use of steerable filters, IEEE Trans. Pattern Analysis and Machine Intelligence, vol. 13, pp. 891–906. 1991.

[39] E. P. Simoncelli,W. T. Freeman,E. H. Adelson, and D. J. Heeger, Shiftable multi-scale transforms, IEEE Trans. Information Theory, vol. 38, pp. 587–607, 1992.

[40] A. B. Watson, DCTune: A technique for visual optimization of DCT quantization matrices for individual images, in Society for Information Display Digest of Technical Papers, vol. XXIV, pp. 946–949, 1993.

[41] R. J. Safranek and J. D. Johnston, A perceptually tuned sub-band image coder with image dependent quantization and post-quantization data compression, in Proc. IEEE Int. Conf. Acoust. Speech, and Signal Processing, pp. 1945–1948, May 1989.

[42] J. W. Woods and S. D. O'Neil, Subband coding of images, IEEE Trans. Acoustics, Speech and Signal Processing, vol. 34, pp. 1278–1288, Oct. 1986.

[43] A. P. Bradley, A wavelet difference predictor, IEEE Trans. Image Processing, vol. 5, pp. 717–730, May 1999.

[44] A. B. Watson,G. Y. Yang,J. A. Solomon, and J. Villasenor, Visibility of wavelet quantization noise, IEEE Trans. Image Processing, vol. 6, pp. 1164–1175, Aug. 1997.

[45] M. Antonini,M. Barlaud,P. Mathieu, and I. Daubechies, Image coding using the wavelet transform, IEEE Trans. Image Processing, vol. 1, pp. 205–220, Apr. 1992.

[46] N. Damera-Venkata,T. D. Kite,W. S. Geisler,B. L. Evans, and A. C. Bovik, Image quality assessment based on a degradation model, IEEE Trans. Image Processing, vol. 4, pp. 636–650, Apr. 2000.

[47] T. D. Kite,N. Damera-Venkata,B. L. Evans, and A. C. Bovik, A high quality, fast inverse halftoning algorithm for error diffused halftones, in Proc. IEEE Int. Conf. Image Proc., vol. 2, pp. 59–63, Oct. 1998.

[48] S. A. Karunasekera and N. G. Kingsbury, A distortion measure for blocking artifacts in images based on human visual sensitivity, IEEE Trans. Image Processing, vol. 4, pp. 713–724, June 1995.

[49] S. A. Karunasekera and N. G. Kingsbury, A distortion measure for image artifacts based on human visual sensitivity, in Proc. IEEE Int. Conf. Acoust., Speech, and Signal Processing, vol. 5, pp. 117–120, 1994.

[50] C. H. Chou and Y. C. Li, A perceptually tuned subband image coder based on the measure of just-noticeable-distortion profile, IEEE Trans. Circuits and Systems for Video Tech., vol. 5, pp. 467–476, Dec. 1995.

[51] M. Miyahara,K. Kotani, and V. R. Algazi, Objective picture quality scale (PQS) for image coding, IEEE Trans. Communications, vol. 46, pp. 1215–1225, Sept. 1998.

[52] T. Yamashita,M. Kameda and M. Miyahara, An objective picture quality scale for video images (PQSvideo) - definition of distortion factors, Proc. SPIE, vol. 4067, pp. 801-809, 2000.

[53] K. T. Tan,M. Ghanbari, and D. E. Pearson, An objective measurement tool for MPEG video quality, Signal Processing, vol. 70, pp. 279–294, Nov. 1998.

[54] K. T. Tan and M. Ghanbari, A multi-metric objective picture-quality measurement model for MPEG video, IEEE Trans. Circuits and Systems for Video Tech., vol. 10, pp. 1208–1213, Oct. 2000.

[55] M. Yuen and H. R. Wu, A survey of hybrid MC/DPCM/DCT video coding distortions, Signal Processing, vol. 70, pp. 247–278, Nov. 1998.

[56] S. Winker, Issues in vision modeling for perceptual video quality assessment, Signal Processing, vol. 78, pp. 231–252, 1999.

[57] A. B. Watson, Toward a perceptual video quality metric, in Proc. SPIE Human Vision and Electronic Imaging III, vol. 3299, pp. 139–147, Jan. 1998.

[58] Z. Yu,H. R. Wu,S. Winkler, and T. Chen, Vision-model-based impairment metric to evaluate blocking artifact in digital video, Proceedings of the IEEE, vol. 90, pp. 154–169, Jan. 2002.

[59] N. Graham,J. G. Robson, and J. Nachmias, Grating summation in fovea and periphery, Vision Research, vol. 18, pp. 815–825, 1978.

[60] E. P. Simoncelli, Modeling the joint statistics of images in the wavelet domain, in Proc. SPIE, vol. 3813, pp. 188–195, July 1999.

[61] J. Liu and P. Moulin, Information-theoretic analysis of interscale and intrascale dependencies between image wavelet coefficients, IEEE Trans. Image Processing, vol. 10, pp. 1647–1658, Nov. 2001.

[62] J. M. Shapiro, Embedded image coding using zerotrees of wavelets coefficients, IEEE Trans. Signal Processing, vol. 41, pp. 2445–3462, Dec. 1993.

[63] A. Said and W. A. Pearlman, A new, fast, and efficient image codec based on set partitioning in hierarchical trees, IEEE Trans. Circuits and Systems for Video Tech., vol. 6, pp. 243–250, June 1996.

[64] D. S. Taubman and M. W. Marcellin, JPEG2000: Image Compression Fundamentals, Standards, and Practice, Kluwer Academic Publishers, 2001.

[65] D. R. Fuhrmann,J. A. Baro, and J. R. Cox Jr., Experimental evaluation of psychophysical distortion metrics for JPEG-encoded images, Journal of Electronic Imaging, vol. 4, pp. 297–406, Oct. 1995.

[66] W. F. Good,G. S. Maitz, and D. Gur, Joint photographic experts group (JPEG) compatible data compression of mammograms, Journal of Digital Imaging, vol. 7, no. 3, pp. 123–132, 1994.

[67] M. R. Frater,J. F. Arnold, and A. Vahedian, Impact of audio on subjective assessment of video quality in videoconferencing applications, IEEE Journal of Selected Areas in Comm., vol. 11, pp. 1059–1062, Sept. 2001.

[68] Z. Wang, Rate Scalable Foveated Image and Video Communications, PhD thesis, Dept. of ECE, The University of Texas at Austin, Dec. 2001.

[69] Z. Wang, Demo imaegs and free software for 'A Universal Image Quality Index', in http://anchovy.ece.utexas.edu/zwang/research/quality_index/demo.html, 2001.

[70] Z. Wang,L. Lu and A. C. Bovik, Video quality assessment using structural distortion measurement, Proc. IEEE Int. Conf. Image Proc., Sept. 2002.

[71] A. A. Webster,C. T. Jones,M. H. Pinson,S. D. Voran, and S. Wolf, An objective video quality assessment system based on human perception, Proc. SPIE, vol. 1913, pp. 15–26, 1993.

[72] S. Wolf and M. H. Pinson, Spatio-temporal distortion metrics for in-service quality monitoring of any digital video system, Proc. SPIE, vol. 3845, pp. 266–277, 1999.

[73] O. Sugimoto,R. Kawada,M. Wada, and S. Matsumoto, Objective measurement scheme for perceived picture quality degradation caused by MPEG encoding without any reference pictures, Proc. SPIE, vol. 4310, pp. 932–939, 2001.

[74] M. C. Q. Farias,S. K. Mitra,M. Carli, and A. Neri, A comparison between an objective quality measure and the mean annoyance values of watermarked videos, in Proc. IEEE Int. Conf. Image Proc., Sept. 2002.

[75] Z. Wang,A. C. Bovik and B. L. Evans, Blind measurement of blocking artifacts in images, Proc. IEEE Int. Conf. Image Proc., vol. 3, pp. 981–984, Sept. 2000.

[76] A. C. Bovik and S. Liu, DCT-domain blind measurement of blocking artifacts in DCT-coded images, Proc. IEEE Int. Conf. Acoust., Speech, and Signal Proc., vol. 3, pp. 1725–1728, May 2001.

[77] P. Gastaldo,S. Rovetta and R. Zunino, Objective assessment of MPEG-video quality: a neural-network approach, in Proc. IJCNN, vol. 2, pp. 1432–1437, 2001.

[78] M. Knee, A robust, efficient and accurate single-ended picture quality measure for MPEG-2, available at http://www-ext.crc.ca/vqeg/frames.html, 2001.

[79] H. R. Wu and M. Yuen, A generalized block-edge impairment metric for video coding, IEEE Signal Processing Letters, vol. 4, pp. 317–320, Nov. 1997.

[80] J. E. Caviedes,A. Drouot,A. Gesnot, and L. Rouvellou, Impairment metrics for digital video and their role in objective quality assessment, Proc. SPIE, vol. 4067, pp. 791–800, 2000.

[81] VQEG: The Video Quality Experts Group, http://www.vqeg.org.

[82] H. R. Sheikh,Z. Wang,L. Cormack and A. C. Bovik, Blind quality assessment for JPEG2000 compressed images, Proc. IEEE Asilomar Conference on Signals, Systems and Computers, Nov. 2002.

[83] Z. Wang,H. R. Sheikh and A. C. Bovik, No-reference perceptual quality assessment of JPEG compressed images, Proc. IEEE Int. Conf. Image Proc., Sept. 2002..

[84] ITU-R Rec. BT. 500–10, Methodology for the Subjective Assessment of Quality for Television Pictures.

[85] B. Li, G. W. Meyer, and R. V. Klassen, A comparison of two image quality models, in Proc. SPIE, vol. 3299, pp. 98–109, 1998.

[86] A. Mayache,T. Eude, and H. Cherifi, A comprison of image quality models and metrics based on human visual sensitivity, in Proc. IEEE Int. Conf. Image Proc., pp. 409–413, 1998.

[87] A. B. Watson, DCT quantization matrices visually optimized for individual images, in Proc. SPIE, vol. 1913, pp. 202–216, 1993.

[88] J. Xing and D. J. Heeger, Measurement and modeling of center-surround suppression and enhancement, Vision Research, vol. 41, pp. 571–583, 2001.

[89] J. Xing, An image processing model of contrast perception and discrimination of the human visual system, in SID Conference, (Boston), May 2002.

[90] A. B. Watson, Visual detection of spatial contrast patterns: Evaluation of five simple models, Optics Express, vol. 6, pp. 12–33, Jan. 2000.




Handbook of Video Databases. Design and Applications
Handbook of Video Databases: Design and Applications (Internet and Communications)
ISBN: 084937006X
EAN: 2147483647
Year: 2003
Pages: 393

flylib.com © 2008-2017.
If you may any questions please contact us: flylib@qtcs.net