Skip navigation
Use este identificador para citar ou linkar para este item: https://repositorio.ufpe.br/handle/123456789/67230

Compartilhe esta página

Título: A Power-Law noise scheduler for image diffusion models in low-dose CT denoising
Autor(es): MATIAS FILHO, Francisco Mauro Falcão
Palavras-chave: Tomografia computadorizada de baixa dose; Remoção de ruído; Redes de difusão; Rotina de adição de ruído; Aprendizado por currículo
Data do documento: 31-Jul-2025
Editor: Universidade Federal de Pernambuco
Citação: MATIAS FILHO, Francisco Mauro Falcão. A Power-Law noise scheduler for image diffusion models in low-dose CT denoising. 2025. Dissertação (Mestrado em Ciência da Computação) - Universidade Federal de Pernambuco, Recife, 2025.
Abstract: The growing need to reduce patient exposure to ionizing radiation in medical imaging has led to the widespread adoption of low-dose computed tomography protocols, guided by the principle of ALARA (As Low As Reasonably Achievable). However, lowering the radiation dose results in increased image noise and artifacts, which can significantly compromise diag nostic quality. Advanced deep learning techniques have demonstrated that neural networks can effectively learn mappings between LDCT and corresponding NDCT images, improving recon struction quality. Nevertheless, most existing approaches rely on direct mappings, which may have reached a performance plateau, as suggested by the diminishing improvements observed across recent models. In this context, diffusion models have emerged as promising alternatives for image restoration due to their generative capabilities. However, traditional formulations based on stochastic noise addition may not be well-suited when modeling complex noise dis tributions. Previous works have addressed this issue by redefining the forward process as a deterministic transformation between clean and noisy images, aligning more closely with ac tual real-world scenarios. Building upon this alternative formulation, we introduce a flexible power-law noise scheduler parameterized by an exponent γ, which controls the rate at which noise is introduced during the diffusion process. This design enables the exploration of different noise progression dynamics, and allows for the evaluation of Curriculum Learning hypotheses in the context of LDCT denoising. When γ > 1, the model follows a curriculum that gradually increases noise complexity, while γ < 1 corresponds to a reverse curriculum. This flexibility positions γ as a key component for guiding the learning process. Experimental results show that the proposed method outperforms standard reconstruction techniques, especially under aggressive noise schedules. Additionally, the best results were obtained with γ > 1, reinforcing the effectiveness of a curriculum-based degradation strategy in LDCT reconstruction tasks.
URI: https://repositorio.ufpe.br/handle/123456789/67230
Aparece nas coleções:Dissertações de Mestrado - Ciência da Computação

Arquivos associados a este item:
Arquivo Descrição TamanhoFormato 
DISSERTAÇÃO Francisco Mauro Falcao Matias Filho.pdf14.28 MBAdobe PDFThumbnail
Visualizar/Abrir


Este arquivo é protegido por direitos autorais



Este item está licenciada sob uma Licença Creative Commons Creative Commons