首页 - 学术活动
Image
segmentation is an important tool with wide applications in computer vision and
medical image analysis, but it remains a challenging problem to this day. This talk
introduces the variational model and algorithm for image segmentation developed
by ourselves in recent research. The main content includes: 1) significant
development of the distance regularized level set evolution (DRLSE) model in our
early work, proposing a new and physically meaningful image segmentation
variational model---the active and sink forward backward diffusion model, aimed
at overcoming the limitations of existing image segmentation variational
methods in terms of robustness and parameter tuning. Moreover, this model has
strong physical intuitiveness and mathematical interpretability, and the
algorithm has good universality; 2) Further improvements and extensions have
been made to the variable scale region fitting (RSF) model proposed by ourselves
earlier, overcoming the limitations of the original RSF model's sensitivity to
initialization and poor controllability of curve evolution.