1 TAMPERE IMAGE DATABASE 2008 TID2008, version 1.0
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3 TID2008 is intended for evaluation of full-reference image visual
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4 quality assessment metrics. TID2008 allows estimating how a given
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5 metric corresponds to mean human perception. For example, in
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6 accordance with TID2008, Spearman correlation between the metric
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7 PSNR (Peak Signal to Noise Ratio) and mean human perception (MOS,
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8 Mean Opinion Score) is 0.525.
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10 Permission to use, copy, or modify this database and its documentation
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11 for educational and research purposes only and without fee is hereby
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12 granted, provided that this copyright notice and the original authors'
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13 names appear on all copies and supporting documentation. This database
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14 shall not be modified without first obtaining permission of the authors.
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15 The authors make no representations about the suitability of this
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16 database for any purpose. It is provided "as is" without express
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17 or implied warranty.
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19 In case of publishing results obtained by means of TID2008 please refer
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20 to one of the following papers (see files mre2009tid.pdf and
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21 vpqm2009tid.pdf in the "papers\" direcory):
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23 [1] N. Ponomarenko, V. Lukin, A. Zelensky, K. Egiazarian, M. Carli,
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24 F. Battisti, "TID2008 - A Database for Evaluation of Full-Reference
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25 Visual Quality Assessment Metrics", Advances of Modern
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26 Radioelectronics, Vol. 10, pp. 30-45, 2009.
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28 [2] N. Ponomarenko, F. Battisti, K. Egiazarian, J. Astola, V. Lukin
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29 "Metrics performance comparison for color image database", Fourth
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30 international workshop on video processing and quality metrics
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31 for consumer electronics, Scottsdale, Arizona, USA. Jan. 14-16, 2009, 6 p.
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33 The TID2008 contains 25 reference images and 1700 distorted images
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34 (25 reference images x 17 types of distortions x 4 levels of distortions).
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35 All images are saved in database in Bitmap format without any compression.
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36 File names are organized in such a manner that they indicate a number of
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37 the reference image, then a number of distortion's type, and, finally, a
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38 number of distortion's level: "iXX_YY_Z.bmp".
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40 For example, the name "i03_08_4.bmp" means the 3-rd reference image corrupted
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41 by the 8-th type of distortions with the 4-th level of this distortion.
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42 Similarly, the name "i12_10_1.bmp" means that this is the 12-th reference
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43 image corrupted by the 10-th type of distortion with the first level.
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44 "i17.bmp" means that this is non-distorted 17-th reference image.
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46 TABLE I. Types of distortion used in TID2008
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48 ü Type of distortion
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50 1 Additive Gaussian noise
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51 2 Additive noise in color components is more intensive than additive noise in the luminance component
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52 3 Spatially correlated noise
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54 5 High frequency noise
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56 7 Quantization noise
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60 11 JPEG2000 compression
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61 12 JPEG transmission errors
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62 13 JPEG2000 transmission errors
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63 14 Non eccentricity pattern noise
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64 15 Local block-wise distortions of different intensity
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65 16 Mean shift (intensity shift)
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68 See [1] for a more detailed explanation.
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70 The file "mos.txt" contains the Mean Opinion Score for each distorted image.
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71 The file "mos_with_names.txt" contains the same information and filenames of
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72 the coressponding distorted images.
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73 The file "mos_std.txt" contains standard deviation of MOS for each
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76 The MOS was obtained from the results of 838 experiments carried out by
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77 observers from three countries: Finland, Italy, and Ukraine (251 experiments
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78 have been carried out in Finland, 150 in Italy, and 437 in Ukraine). Totally,
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79 the 838 observers have performed 256428 comparisons of visual quality of
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80 distorted images or 512856 evaluations of relative visual quality in image
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83 Higer value of MOS (0 - minimal, 9 - maximal) corresponds to higer visual
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84 quality of the image.
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86 The following files contain values of some quality metrics calculated for
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89 "psnr.txt" - peak signal to noise ratio;
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90 "psnry.txt" - peak signal to noise ratio calculated for the luminance component;
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91 "snr.txt" - signal to noise ratio [3].
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92 "mse.txt" - inverted values of mean square error [3].
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93 "dctune.txt" - inverted values of the DCTune metric [4];
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94 "uqi.txt" - values of the UQI metric [5];
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95 "ssim.txt" - values of the SSIM metric [6];
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96 "mssim.txt" - vaules of the MSSIM metric [7,3];
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97 "linlab.txt" - inverted values of the LinLab metric [8];
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98 "xyz" - inverted values of the YCxCz2XYZ metric [9];
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99 "psnrhvs.txt" - values of the PSNR-HVS metric [10];
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100 "psnrhvsm.txt" - values of the PSNR-HVS-M metric [11];
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101 "vif.txt" - values of the VIF metric [12,3];
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102 "vifp.txt" - pixel domain version VIF [12,3];
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103 "nqm.txt" - values of the NQM metric [13,3];
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104 "wsnr.txt" - values of the WSNR metric [14,3];
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105 "ifc.txt" - values of the IFC metric [15,3];
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106 "vsnr.txt" - values of the VSNR metric [16,3];
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108 [3] Matthew Gaubatz, "Metrix MUX Visual Quality Assessment Package: MSE,
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109 PSNR, SSIM, MSSIM, VSNR, VIF, VIFP, UQI, IFC, NQM, WSNR, SNR",
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110 http://foulard.ece.cornell.edu/gaubatz/metrix_mux/
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111 [4] A. B. Watson, "DCTune: A technique for visual optimization of DCT
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112 quantization matrices for individual images," Soc. Inf. Display Dig.
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113 Tech. Papers, vol. XXIV, pp. 946-949, 1993.
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114 [5] Z. Wang, A. Bovik, "A universal image quality index", IEEE Signal
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115 Processing Letters, vol. 9, pp. 81-84, March, 2002.
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116 [6] Z. Wang, A. Bovik, H. Sheikh, E. Simoncelli, "Image quality assessment:
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117 from error visibility to structural similarity", IEEE Transactions on
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118 Image Proc., vol. 13, issue 4, pp. 600-612, April, 2004.
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119 [7] Z. Wang, E. P. Simoncelli and A. C. Bovik, "Multi-scale structural
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120 similarity for image quality assessment," Invited Paper, IEEE Asilomar
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121 Conference on Signals, Systems and Computers, Nov. 2003.
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122 [8] B. Kolpatzik and C. Bouman, "Optimized Error Diffusion for High Quality
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123 Image Display", Journal Electronic Imaging, pp. 277-292, 1992.
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124 [9] B. W. Kolpatzik and C. A. Bouman, "Optimized Universal Color Palette
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125 Design for Error Diffusion", Journal Electronic Imaging, vol. 4,
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127 [10] K. Egiazarian, J. Astola, N. Ponomarenko, V. Lukin, F. Battisti,
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128 M. Carli, "New full-reference quality metrics based on HVS", CD-ROM
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129 Proceedings of the Second International Workshop on Video Processing
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130 and Quality Metrics, Scottsdale, USA, 2006, 4 p.
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131 [11] N. Ponomarenko, F. Silvestri, K. Egiazarian, M. Carli, J. Astola,
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132 V. Lukin "On between-coefficient contrast masking of DCT basis
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133 functions", CD-ROM Proc. of the Third International Workshop on Video
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134 Processing and Quality Metrics. - USA, 2007. - 4 p.
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135 [12] H.R. Sheikh.and A.C. Bovik, "Image information and visual quality,"
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136 IEEE Transactions on Image Processing, Vol.15, no.2, 2006, pp. 430-444.
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137 [13] Damera-Venkata N., Kite T., Geisler W., Evans B. and Bovik A. "Image
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138 Quality Assessment Based on a Degradation Model", IEEE Trans. on Image
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139 Processing, Vol. 9, 2000, pp. 636-650.
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140 [14] T. Mitsa and K. Varkur, "Evaluation of contrast sensitivity functions
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141 for the formulation of quality measures incorporated in halftoning
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142 algorithms", ICASSP '93-V, pp. 301-304.
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143 [15] H.R. Sheikh, A.C. Bovik and G. de Veciana, "An information fidelity
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144 criterion for image quality assessment using natural scene statistics",
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145 IEEE Transactions on Image Processing, vol.14, no.12, 2005, pp. 2117-2128.
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146 [16] D.M. Chandler, S.S. Hemami, "VSNR: A Wavelet-Based Visual Signal-to-Noise
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147 Ratio for Natural Images", IEEE Transactions on Image Processing,
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148 Vol. 16 (9), pp. 2284-2298, 2007.
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150 The programs "spearman.exe" and "kendall.exe" calculate values of Spearman
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151 and Kendall rank correlations for entire set of the TID2008 images as well
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152 as for particular subsets given in the Table II.
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154 TABLE II. Subsets of TID2008 definded by default
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156 ü Type of distortion Noise Noise2 Safe Hard Simple Exotic Exotic2 Full
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158 1 Additive Gaussian noise + + + - + - - +
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159 2 Noise in color comp. - + - - - - - +
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160 3 Spatially correl. noise + + + + - - - +
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161 4 Masked noise - + - + - - - +
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162 5 High frequency noise + + + - - - - +
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163 6 Impulse noise + + + - - - - +
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164 7 Quantization noise + + - + - - - +
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165 8 Gaussian blur + + + + + - - +
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166 9 Image denoising + - - + - - - +
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167 10 JPEG compression - - + - + - - +
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168 11 JPEG2000 compression - - + - + - - +
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169 12 JPEG transm. errors - - - + - - + +
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170 13 JPEG2000 transm. errors - - - + - - + +
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171 14 Non ecc. patt. noise - - - + - + + +
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172 15 Local block-wise dist. - - - - - + + +
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173 16 Mean shift - - - - - + + +
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174 17 Contrast change - - - - - + + +
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176 The command line is "spearman <data1> <data2>" or "kendall <data1> <data2>".
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178 Command line examples:
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180 spearman mos.txt ssim.txt
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181 kendall mos.txt dctune.txt
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182 spearman linlab.txt xyz.txt
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183 kendall psnr.txt psnr-hvs.txt
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185 An example of usage:
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187 kendall.exe mos.txt uqi.txt
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197 TABLE III. Ranking of compared metrics in accordance with
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198 Spearman correlation with MOS
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199 Rank Measure Spearman correlation
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219 TABLE IV. Ranking of compared metrics in accordance with
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220 Kendall correlation with MOS
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221 Rank Measure Kendall correlation
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241 We plan to regularly update the versions of this database. New versions
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242 will include new types of distortion and take into account results of
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243 additional experiments.
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245 We will highly appreciate authors of other metrics if they will inform
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246 us (please, mail to karen@cs.tut.fi or nikolay@ponomarenko.info) how to get
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247 executable files (e.g., Matlab codes) of their metrics. We guarantee
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248 that we will not pass them to other users and will include future
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249 results obtained for such metrics in analysis for our database.
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