modulating the amount of color correction (Naccari
et al, 2004), (Naccari et al, 2005). For sake of
comparison some subjective tests were performed. A
data set of 800 natural scenes, which did no belong
to our statistic class sample, was used to perform
visual assessment. 50 subjects, with no particular
visual defects on color perception and without
experience in digital image or color processing,
expressed their opinion in a light control
environment and on a CRT monitor with a standard
sRGB profile. Two types of visual tests were
performed: an overall preference and a comparative
judgment between the original and a segmented
images obtained using (Comaniciu et al, 1997).
Table
1 reports the overall preference when the input and
the detected semantic region were simultaneously
presented to the subject. This index represents the
average in terms of percentage referred to the
subject choices (2 - Very Accurate, 1 - Accurate, 0 -
Acceptable, -1 - Inaccurate, -2 - Wrong) with respect
to the final result. The proposed strategy has
obtained an effective good score.
Table 2 reports the
comparative tests results performed by showing to
each subject in random order a couple of images
containing the original, the corresponding
segmented one and our result. For each comparison
(original vs. segmented/classified) a quality score
was assigned. Also in this case the proposed
enhancement has obtained effective performances.
These results confirm the effective detection of
semantic regions with respect to a simple
segmentation.
A further example of global color enhancement
is showed in Figure 7.
6 CONCLUSION AND FUTURE
WORKS
A novel approach able to detect semantic regions, on
pixel basis, relative to natural scene (vegetation, sky,
sea, and skin) has been presented. The overall
enhancement obtained by making use of such
regions is able to reproduce the “expected color
appearance”.
Future works will include the possibility to
further extend the region classifier, just introducing
metadata and spatial consideration. Major details,
links and demo can be found at
http://www.dmi.unict.it/~iplab.
REFERENCES
Abdou, I.E., Pratt, W.K., 1979. Qualitative Design and
Evaluation of Enhancement/Thresholding Edge
Detector, Proceedings of IEEE, vol. 67, No. 5, pp.
753-763.
Battiato, S., Mancuso, M., Bosco, A., Guarnera, M., 2001.
Psychovisual and Statistical Optimization of
Quantization Tables for DCT Compression Engines.
International Conference on Image Analysis and
Processing 2001, pp. 602-606.
Battiato, S., Bosco, A., Castorina, A., Messina, G., 2004.
Automatic Image Enhancement by Content Dependent
Exposure Correction. EURASIP Journal on Applied
Signal Processing, Vol. 12, pp. 1849-1860.
Bayer, B.E, 1976. Color Imaging Array. U.S. Patent
3971065.
Bosco, A., Mancuso, M., Battiato, S., Spampinato, G.,
2002. Temporal Noise Reduction of Bayer Matrixed
Video Data. International Conference on Multimedia
and Expo 2002, pp.681-684.
Comaniciu, D., Meer, D., 1997. Robust Analysis of
Feature Spaces: Color Image Segmentation. Conf.
Computer Vision and Pattern Recognition, pp. 750-
755.
Fredembach, C., Schröder, M., Süsstrunk, S., 2004.
Eigenregions for Image Classification. IEEE
Transactions on Pattern Analysis and Machine
Intelligence (PAMI), Vol. 26 (12), pp. 1645-1649.
Lukac, R., Martin, K., Platanoitis, K.N., 2004. Digital
Camera Zooming Based on Unified CFA image
Processing Steps. IEEE Trans. on Cons. Electronics,
Vol.50, (1), pp. 15-24.
Luo, J., Etz, S.P., 2003. A Physical Model-based
Approach to Detecting Sky in Photographic Images.
IEEE Transactions on Image Processing, Vol. 3 (11).
Lee, E.J., Ha, Y.H., 1998. Favorite Color Correction for
Favorite Colors. IEEE Trans. On Consumer
Electronics, Vol. 44 (1), pp. 10-15.
MPEG Requirements Group, 2001. Description of MPEG-
7 Content Set, ISO/IEC/JTC1/SC29/WG11/N2467.
Naccari, F., Battiato, S., Bruna, A., Cariolo, S., Castorina,
A., 2004. Natural Scenes Enhancement by Adaptive
Color Correction. IEEE ISCE International
Symposium on Consumer Electronic, pp. 320-323.
Naccari, F., Battiato, S., Bruna, A., Capra, A., Castorina,
A., 2005. Natural Scene Classification for Color
Enhancement. IEEE Trans. on Cons. Electronics,
Vol. 5 (1), pp.234-239.
Yendrikhovskij, S.N., Blommaert, F.J.J , De Ridder, H.,
1998. Optimizing color reproduction of natural
images. Sixth Color Imaging Conference: Color
Science, Systems, and Applications, pp. 140 145.
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