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Comparison of PDE-Based Nonlinear Diffusion Approaches for Image Enhancement and Denoising in Optical Coherence Tomography

机译:基于PDE的非线性扩散方法在光学相干断层扫描中用于图像增强和降噪的比较

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摘要

A comparison between two nonlinear diffusion methods for denoising OCT images is performed. Specifically, we compare and contrast the performance of the traditional nonlinear Perona-Malik filter with a complex diffusion filter that has been recently introduced by Gilboa . The complex diffusion approach based on the generalization of the nonlinear scale space to the complex domain by combining the diffusion and the free Schrodinger equation is evaluated on synthetic images and also on representative OCT images at various noise levels. The performance improvement over the traditional nonlinear Perona-Malik filter is quantified in terms of noise suppression, image structural preservation and visual quality. An average signal-to-noise ratio (SNR) improvement of about 2.5 times and an average contrast to noise ratio (CNR) improvement of 49% was obtained while mean structure similarity (MSSIM) was practically not degraded after denoising. The nonlinear complex diffusion filtering can be applied with success to many OCT imaging applications. In summary, the numerical values of the image quality metrics along with the qualitative analysis results indicated the good feature preservation performance of the complex diffusion process, as desired for better diagnosis in medical imaging processing
机译:对用于消噪OCT图像的两种非线性扩散方法进行了比较。具体而言,我们将传统的非线性Perona-Malik滤波器的性能与Gilboa最近推出的复杂扩散滤波器进行了比较和对比。通过在合成图像上以及在各种噪声水平下的代表性OCT图像上,评估了通过将扩散与自由Schrodinger方程相结合,将非线性尺度空间推广到复杂域的复杂扩散方法。与传统的非线性Perona-Malik滤波器相比,在噪声抑制,图像结构保留和视觉质量方面的性能改进得到了量化。获得了大约2.5倍的平均信噪比(SNR)改善和49%的平均对比度与噪声比(CNR)改善,而平均结构相似度(MSSIM)在去噪后几乎没有降低。非线性复数扩散滤波可以成功地应用于许多OCT成像应用。综上所述,图像质量指标的数值以及定性分析结果表明了复杂扩散过程的良好特征保留性能,这是医学成像处理中更好诊断所希望的

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