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Image denoising via fundamental anisotropic diffusion and wavelet shrinkage: A comparative study

机译:通过基本各向异性扩散和小波收缩的图像去噪:比较研究

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Noise removal faces a challenge: Keeping the image details. Resolving the dilemma of two purposes (smoothing and keeping image features in tact) working inadvertently of each other was an almost impossible task until anisotropic diffusion (AD) was formally introduced by Perona and Malik (PM). AD favors intra-region smoothing over inter-region in piecewise smooth images. Many authors regularized the original PM algorithm to overcome its drawbacks. We compared the denoising performances of such 'fundamental' AD algorithms and one of the most powerful multiresolution tools available today, namely, wavelet shrinkage. The AD algorithms here are called 'fundamental' in the sense that the regularized versions center around the original PM algorithm with minor changes to the logic. The algorithms are tested with different noise types and levels. On top of the visual inspection, two mathematical metrics are used for performance comparison: Signal-to-noise ratio (SNR) and universal image quality index (UIQI). We conclude that some of the regularized versions of PM algorithm (AD) perform comparably with wavelet shrinkage. This saves a lot of computational power. With this conclusion, we applied the better-performing fundamental AD algorithms to a new imaging modality: Optical Coherence Tomography (OCT).
机译:噪音删除面临挑战:保持图像细节。解决两种目的的困境(平滑和保持触发的图像特征)无意中互相加工,直到通过Perona和Malik(PM)正式引入各向异性扩散(AD),几乎不可能的任务。广告在分段平滑图像中,在区域间平滑区域平滑区域。许多作者正规化了原始PM算法以克服其缺点。我们比较了这种“基本”广告算法的去噪表演,以及今天的最强大的多分辨率工具之一,即小波收缩。这里的广告算法称为“基本”,意义上是原始PM算法周围的正则化版本中心,对逻辑的微小变化。用不同的噪声类型和级别测试算法。在视觉检查之上,两种数学度量用于性能比较:信噪比(SNR)和通用图像质量指数(UIQI)。我们得出结论,PM算法(AD)的一些正则化版本与小波收缩相当执行。这节省了大量的计算能力。借鉴了这一结论,我们将更好的基本广告算法应用于新的成像模型:光学相干断层扫描(OCT)。

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