Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
529540 | Journal of Visual Communication and Image Representation | 2012 | 15 Pages |
Noise estimation is an important process in digital imaging systems. Many noise reduction algorithms require their parameters to be adjusted based on the noise level. Filter-based approaches of image noise estimation usually were more efficient but had difficulty on separating noise from images. Block-based approaches could provide more accurate results but usually required higher computation complexity. In this work, a design framework for combining the strengths of filter-based and block-based approaches is presented. Different homogeneity analyzers for identifying the homogeneous blocks are discussed and their performances are compared. Then, two well-known filters, the bilateral and the non-local mean, are reviewed and their parameter settings are investigated. A new bilateral filter with edge enhancement is proposed. A modified non-local mean filter with much less complexity is also present. Compared to the original non-local mean filter, the complexity is dramatically reduced by 75% and yet the image quality is maintained.
► A design framework for hybrid approaches of image noise estimation was proposed. ► Different operators were investigated and shown to be good homogeneity analyzers. ► The proposed framework can provide accurate and reliable estimation of image noise. ► A modified bilateral filter was proposed to remove image noise and preserve edges. ► A modified non-local mean filter was proposed to reduce the complexity.