Skip to main navigation
Skip to search
Skip to main content
NYU Scholars Home
Help & FAQ
Home
Profiles
Research units
Research output
Search by expertise, name or affiliation
Image denoising via adjustment of wavelet coefficient magnitude correlation
J. Portilla,
E. P. Simoncelli
Neural Science
Research output
:
Contribution to conference
›
Paper
›
peer-review
Overview
Fingerprint
Fingerprint
Dive into the research topics of 'Image denoising via adjustment of wavelet coefficient magnitude correlation'. Together they form a unique fingerprint.
Sort by
Weight
Alphabetically
Keyphrases
Autocorrelation
100%
Wavelet Coefficients
100%
Magnitude Correlation
100%
Image Denoising
100%
Statistical Properties
50%
Noise Free
50%
Mean Squared Error
50%
Natural Images
50%
Wavelet Subbands
50%
Additive White Gaussian Noise
50%
Denoising
50%
Photographic Images
50%
Fewer Iterations
50%
Noisy Image
50%
Complex Wavelets
50%
Wavelet Decomposition
50%
Engineering
Statistical Property
100%
Mean-Squared-Error
100%
Natural Image
100%
Photographic Image
100%
Noisy Image
100%
Complex Wavelet
100%
Wavelet Decomposition
100%
Computer Science
Wavelet Coefficient
100%
Magnitude Correlation
100%
image denoising
100%
Statistical Property
50%
de-noising
50%
Complex Wavelet
50%
Photographic Image
50%
Wavelet Decomposition
50%