Image denoising is a classical problem in image processing. Its essential goal is to preserve the image
features and to reduce noise effectively. The nonlocal means (NL-means) filter is a successful approach proposed
in recent years due to its patch similarity comparison. However, the accuracy of similarities in this algorithm
degrades when it suffers from heavy noise. In this paper, we introduce feature similarities based on a multichannel
filter into NL-means filter. The multi-bank based feature vectors of each pixel in the image are computed
by convolving from various orientations and scales to Leung-Malik set (edge, bar and spot filters), and then the
similarities based on this information are computed instead of pixel intensity. Experiments are carried out with
Rician noise. The results demonstrate the superior performance of the proposed method. The wavelet-based
method and traditional NL-means in term of both mean square error (MSE) and perceptual quality are compared
with the proposed method, and structural similarity (SSIM) and quality index based on local variance (QILV) are
given.
GUO Tian-li (郭甜莉), LIU Qie-gen (刘且根), LUO Jian-hua* (骆建华)
. Filter Bank Based Nonlocal Means for Denoising Magnetic Resonance Images[J]. Journal of Shanghai Jiaotong University(Science), 2014
, 19(1)
: 72
-78
.
DOI: 10.1007/s12204-014-1476-8
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