研究目的
Investigating the effectiveness of a new hybrid method for medical image segmentation that integrates image gradient, local information, and global information into a framework, utilizing fractional order differentiation to enhance low frequency information.
研究成果
The proposed model demonstrates noise immunity and the ability to accurately segment boundaries in the presence of noise, achieving higher DSC values than traditional models. Future work will focus on constructing a more effective model and algorithm, including parameter selection, and conducting more experiments to validate the stability of the improvement when using fractional derivative information.
研究不足
The study does not explicitly mention limitations, but potential areas for optimization could include parameter selection for dealing with inhomogeneous properties in medical image segmentation and further validation on a wider range of medical images.