New Fourth-Order Grayscale Indicator-Based Telegraph Diffusion Model for Image Despeckling
- URL: http://arxiv.org/abs/2509.26010v1
- Date: Tue, 30 Sep 2025 09:41:25 GMT
- Title: New Fourth-Order Grayscale Indicator-Based Telegraph Diffusion Model for Image Despeckling
- Authors: Rajendra K. Ray, Manish Kumar,
- Abstract summary: We propose a fourth-order nonlinear PDE model that integrates diffusion and wave properties.<n>The effectiveness of the proposed model is evaluated against two second-order anisotropic diffusion approaches.<n>We extend the proposed model to study color images by applying the denoising process independently to each channel.
- Score: 2.3624430033502057
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Second-order PDE models have been widely used for suppressing multiplicative noise, but they often introduce blocky artifacts in the early stages of denoising. To resolve this, we propose a fourth-order nonlinear PDE model that integrates diffusion and wave properties. The diffusion process, guided by both the Laplacian and intensity values, reduces noise better than gradient-based methods, while the wave part keeps fine details and textures. The effectiveness of the proposed model is evaluated against two second-order anisotropic diffusion approaches using the Peak Signal-to-Noise Ratio (PSNR) and Mean Structural Similarity Index (MSSIM) for images with available ground truth. For SAR images, where a noise-free reference is unavailable, the Speckle Index (SI) is used to measure noise reduction. Additionally, we extend the proposed model to study color images by applying the denoising process independently to each channel, preserving both structure and color consistency. The same quantitative metrics PSNR and MSSIM are used for performance evaluation, ensuring a fair comparison across grayscale and color images. In all the cases, our computed results produce better results compared to existing models in this genre.
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