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Diffusion-Driven Image Denoising Model with Texture Preservation Capabilities

机译:具有纹理保存能力的扩散驱动的图像去噪模型

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摘要

Noise removal in images denotes an interesting and a relatively challenging problem that has captured the attention of many scholars. Recent denoising methods focus on simultaneously restoring noisy images and recovering their semantic features (edges and contours). But preservation of textures, which facilitate interpretation and analysis of complex images, remains an open-ended research question. Classical methods (Total variation and Perona-Malik) and image denoising approaches based on deep neural networks tend to smudge fine details of images. Results from previous studies show that these methods, in addition, can introduce undesirable artifacts into textured images. To address the challenges, we have proposed an image denoising method based on anisotropic diffusion processes. The divergence term of our method contains a diffusion kernel that depends on the evolving image and its gradient magnitude to ensure effective preservation of edges, contours, and textures. Furthermore, a regularization term has been proposed to denoise images corrupted by multiplicative noise. Empirical results demonstrate that the proposed method generates images with higher perceptual and objective qualities.
机译:图像中的噪音删除表示有趣,也是一个相对挑战的问题,捕获了许多学者的注意。最近的去噪方法专注于同时恢复噪声图像并恢复其语义特征(边缘和轮廓)。但是保护纹理的保存,这促进了复杂图像的解释和分析,仍然是一个开放式的研究问题。基于深度神经网络的古典方法(总变化和腓源和腓源-Malik)和图像去噪方法倾向于涂抹图像的细节。来自先前研究的结果表明,这些方法还可以将不期望的伪像引入纹理图像中。为了解决挑战,我们提出了一种基于各向异性扩散过程的图像去噪方法。我们方法的分歧项包含扩散内核,这取决于不断变化的图像及其梯度幅度,以确保有效保存边缘,轮廓和纹理。此外,已经提出了正则化术语以通过乘法噪声损坏的图像。经验结果表明,所提出的方法产生具有更高感知和客观品质的图像。

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