Friday 6 December 2013

Multichannel Non-Local Means Fusion for Color Image Denoising MECS1331

Abstract:

                   In this paper, we propose an advanced color image denoising scheme called multichannel non-local means fusion (MNLF), where noise reduction is formulated as the minimization of a penalty function. An inherent feature of color images is the strong inter-channel correlation, which is introduced into the penalty function as additional prior constraints to expect a better performance. The optimal solution of the minimization problem is derived consisting of constructing and fusing multiple nonlocal means (NLM) spanning all three channels. The weights in the fusion are optimized to minimize the overall mean squared denoising error, with the help of the extended and adapted Stein’s unbiased risk estimator (SURE). Simulations on representative test images under various noise levels verify the improvement brought by the multichannel NLM compared to the traditional single-channel NLM. Meanwhile, MNLF provides competitive performance both in terms of the color peak signal-to-noise ratio (cPSNR) and in perceptual quality when compared with other state-of-the-art benchmarks

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