| Literature DB >> 27148597 |
Qing Guo1, Fangmin Dong1, Shuifa Sun2, Xuhong Ren1, Shiyu Feng1, Bruce Zhi Gao3.
Abstract
A contourlet domain image denoising framework based on a novel Improved Rotating Kernel Transformation is proposed, where the difference of subbands in contourlet domain is taken into account. In detail: (1). A novel Improved Rotating Kernel Transformation (IRKT) is proposed to calculate the direction statistic of the image; The validity of the IRKT is verified by the corresponding extracted edge information comparing with the state-of-the-art edge detection algorithm. (2). The direction statistic represents the difference between subbands and is introduced to the threshold function based contourlet domain denoising approaches in the form of weights to get the novel framework. The proposed framework is utilized to improve the contourlet soft-thresholding (CTSoft) and contourlet bivariate-thresholding (CTB) algorithms. The denoising results on the conventional testing images and the Optical Coherence Tomography (OCT) medical images show that the proposed methods improve the existing contourlet based thresholding denoising algorithm, especially for the medical images.Entities:
Keywords: Contourlet transform; Direction statistic; Image denoising; Improved Rotating Kernel Transformation
Year: 2013 PMID: 27148597 PMCID: PMC4852875 DOI: 10.1007/978-3-319-03731-8_14
Source DB: PubMed Journal: Adv Multimed Inf Process - PCM 2013 (2013)