研究目的
To propose a novel fractional-order differentiation model for low-dose CT (LDCT) image processing that effectively suppresses noise and artifacts while preserving edges and details.
研究成果
The proposed FPMTV model effectively suppresses noise and artifacts in LDCT images while preserving edges and details, outperforming existing methods like TV, PMTV, and FTV models. Future work includes reducing computational costs and extending the application to other LDCT image processing techniques.
研究不足
The computational cost of fractional-order differentiation methods is high due to the need for more pixels in computations. The selection of fractional order α is crucial and was determined manually based on SSIM improvement and visual effect, indicating a need for adaptive selection methods in future research.