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ASME Press Select Proceedings
International Conference on Computer Technology and Development, 3rd (ICCTD 2011)
ISBN:
9780791859919
No. of Pages:
2000
Publisher:
ASME Press
Publication date:
2011
eBook Chapter
48 Optimized Parameters for Noise Level Estimation in Image Processing
By
A. Senthil Rajan
A. Senthil Rajan
Head of the Department,
MCA
, Jyoti nivas college, Bangalore
, India
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Page Count:
5
-
Published:2011
Citation
Rajan, AS. "Optimized Parameters for Noise Level Estimation in Image Processing." International Conference on Computer Technology and Development, 3rd (ICCTD 2011). Ed. Zhou, J. ASME Press, 2011.
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A methodology of noise elimination in a gray image was tested and different parameters were investigated in order to estimate the noise level in a gray image. The estimated mean noise was calculated for variant values of the parameters and it was shown that only the number of orientation to use can affect the mean noise value, also it was shown that images with power to 2 size can optimize the noise processing.
Abstract
Key Words
1. Introduction
2. Methodology for Noise Level Estimation
3. Experimental Results
4. Conclusion
References
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