Wavelet Based Video Denoising using Probabilistic Models

Azka Maqsood, I. Touqir, A. M. Siddiqui, Maham Haider
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引用次数: 1

Abstract

Wavelet based image processing techniques do not strictly follow the conventional probabilistic models that are unrealistic for real world images. However, the key features of joint probability distributions of wavelet coefficients are well captured by HMT (Hidden Markov Tree) model. This paper presents the HMT model based technique consisting of Wavelet based Multiresolution analysis to enhance the results in image processing applications such as compression, classification and denoising. The proposed technique is applied to colored video sequences by implementing the algorithm on each video frame independently. A 2D (Two Dimensional) DWT (Discrete Wavelet Transform) is used which is implemented on popular HMT model used in the framework of Expectation-Maximization algorithm. The proposed technique can properly exploit the temporal dependencies of wavelet coefficients and their non-Gaussian performance as opposed to existing wavelet based denoising techniques which consider the wavelet coefficients to be jointly Gaussian or independent. Denoised frames are obtained by processing the wavelet coefficients inversely. Comparison of proposed method with the existing techniques based on CPSNR (Coloured Peak Signal to Noise Ratio), PCC (Pearson’s Correlation Coefficient) and MSSIM (Mean Structural Similarity Index) has been carried out in detail.The proposed denoising method reveals improved results in terms of quantitative and qualitative analysis for both additive and multiplicative noise and retains nearly all the structural contents of a video frame.
基于概率模型的小波视频去噪
基于小波的图像处理技术并不严格遵循传统的概率模型,这对于现实世界的图像是不现实的。然而,隐马尔可夫树模型很好地捕捉了小波系数联合概率分布的关键特征。本文提出了基于HMT模型的小波多分辨率分析技术,以提高图像压缩、分类和去噪等图像处理的效果。通过在每个视频帧上独立实现该算法,将该技术应用于彩色视频序列。在期望最大化算法框架中,采用了一种基于HMT模型的二维离散小波变换(DWT)。与现有的基于小波的去噪技术将小波系数视为联合高斯或独立的去噪技术相反,该技术可以适当地利用小波系数的时间依赖性及其非高斯性能。对小波系数进行反处理得到去噪帧。将该方法与现有的基于彩色峰值信噪比(CPSNR)、Pearson相关系数(PCC)和平均结构相似指数(MSSIM)的方法进行了详细的比较。所提出的去噪方法在对加性和乘性噪声的定量和定性分析方面都显示出改进的结果,并且几乎保留了视频帧的所有结构内容。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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