Image evaluation schemes must fulfill both objective and subjective requirements. Objective image quality evaluation models are often preferred over subjective quality evaluation, because of their fastness and cost-effectiveness. However, the correlation between subjective and objective estimations is often poor. One of the key reasons for this is that it is not known what image features subjects use when they evaluate image quality. We have studied subjective image quality evaluation in the case of image sharpness. We used an Interpretation-based Quality (IBQ) approach, which combines both qualitative and quantitative approaches to probe the observer's quality experience. Here we examine how naive subjects experienced and classified natural images, whose sharpness was changing. Together the psychometric and qualitative information obtained allows the correlation of quantitative evaluation data with its underlying subjective attribute sets. This offers guidelines to product designers and developers who are responsible for image quality. Combining these methods makes the end-user experience approachable and offers new ways to improve objective image quality evaluation schemes.
[1]
D. Valentin,et al.
Perceptual dimensions of tactile textures.
,
2003,
Acta psychologica.
[2]
Søren Bech,et al.
The RaPID Perceptual Image Description Method (RaPID)
,
1996
.
[3]
Sean Olive.
A Multiple Regression Model for Predicting Loudspeaker Preference Using Objective Measurements: Part I - Listening Test Results
,
2004
.
[4]
Theo Tschudi.
Handbook of Image Quality, B.W. Keelan. Marcell Dekker, Inc., Monticello, NY (2002), (XX/516pp., numerous figures, US$ 195.00, Hardbound), ISBN: 0-8247-0770-2
,
2005
.
[5]
Luke Chengwu Cui.
Do experts and naive observers judge printing quality differently?
,
2003,
IS&T/SPIE Electronic Imaging.
[6]
Peter G. J. Barten,et al.
Contrast sensitivity of the human eye and its e ects on image quality
,
1999
.