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首页> 外文期刊>International journal of computational vision and robotics >Enhancing proximity measure between residual and noise for image denoising
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Enhancing proximity measure between residual and noise for image denoising

机译:增强残差和噪声之间的接近度以进行图像降噪

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摘要

Sparse representation and dictionary learning-based image denoising algorithms approximate the clean image patch by linear combination of few dictionary atoms. Clearly, residue after completion of denoising must be similar to the contaminating noise. Ideally, clean image patch is perfectly recovered if residue is exactly contaminating noise. Hence, for better denoising, residue must be enforced to possess characteristics similar to the contaminating noise. In this paper, we model residue such that proximity between residue and contaminating noise is increased. The proposed mathematical model makes sure that the residue is as random in nature as contaminating noise. This is achieved by unique sparse coding and dictionary update stages developed based on modelling of randomness in residue. The proposed algorithm is tested on additive white Gaussian noise (AWGN), additive coloured Gaussian noise (ACGN) and Laplacian noise. Since performance of the image denoising algorithms also depend on image effective bandwidth, therefore, in this paper we have generated synthetic images with known effective image bandwidths. These images are generated using the discrete cosine transform (DCT). The proposed algorithm is also tested on these images. The proposed algorithm is compared with state-of-the-art algorithms. The comparison on the bases of peak signal-to-noise ratio (PSNR), structure similarity index measure (SSIM) and feature similarity index measure (FSIM) indicate that the proposed algorithm is able to produce often better and competitive results.
机译:稀疏表示和基于字典学习的图像去噪算法通过少量字典原子的线性组合来近似干净图像块。显然,去噪完成后的残留物必须类似于污染噪声。理想情况下,如果残留物正好污染噪声,则可以完美地恢复干净的图像斑块。因此,为了更好地去噪,必须强制残留物具有类似于污染噪声的特性。在本文中,我们对残渣进行建模,以提高残渣与污染噪声之间的接近度。所提出的数学模型可确保残留物与污染噪声一样具有随机性。这是通过基于残基随机性建模开发的独特稀疏编码和字典更新阶段来实现的。对加性白高斯噪声(AWGN),加色有色高斯噪声(ACGN)和拉普拉斯噪声进行了测试。由于图像去噪算法的性能还取决于图像有效带宽,因此,在本文中,我们生成了具有已知有效图像带宽的合成图像。这些图像是使用离散余弦变换(DCT)生成的。所提出的算法也在这些图像上进行了测试。将该算法与最新算法进行了比较。在峰值信噪比(PSNR),结构相似性指标测度(SSIM)和特征相似性指标测度(FSIM)的基础上进行比较,表明所提出的算法通常能够产生更好的竞争结果。

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