Sparse-view CT reconstruction poses challenges due to image degradation. The study introduces a Cascaded Diffusion with Discrepancy Mitigation (CDDM) framework to address this issue. By generating low-quality images in latent space and high-quality images in pixel space, the framework minimizes computational costs and mitigates the training-sampling gap induced by data consistency. Specialized Alternating Direction Method of Multipliers (ADMM) is employed for image gradients, enhancing regularization. Experimental results demonstrate CDDM's superior performance in high-quality image generation compared to existing methods.
Till ett annat språk
från källinnehåll
arxiv.org
Djupare frågor