The geometric active contour model is a classical image segmentation model based on the curve evolution theory and the level set method
which has been successfully applied to the segmentation of medical images. Due to the existence of speckle noise
the model fails in SAR image segmentation. Moreover
there are several disadvantages with this model. First
the evolution equation isn’t obtained with the energy minimization method. Second
the level set function needs to be reinitialized to a signed distance function periodically during the evolution. Finally
the model is computationally inefficient. Based on SAR image edge detectors and the variational level set method
a novel geometric active contour model is proposed under the criterion of energy minimization. The basic idea is that the energy functional is defined directly on the level set function and the original edge indicator function based on gradients is replaced with a new edge indicator function based on the ROEWA operator. Thus
the ability of detecting edges and the accuracy of locating edges are greatly increased
which makes the model very appropriate for SAR image segmentation. In addition
a term penalizing the level set function is added to the energy functional in order to force the level set function to be close to a signed distance function and therefore completely eliminates the need of the costly re-initialization procedure. Thanks to the contribution of this term
the numerical calculation of the model can be implemented by a simple explicit difference scheme; at the same time the evolution speed keeps very fast. The proposed model has several advantages. For example
it can be easily implemented; it results in accurate segmentation boundaries; it converges fast and its level set function doesn’t need to be reinitialized. The experimental results on the simulated image and real data show its efficiency and accuracy.
关键词
SAR图像分割活动轮廓模型水平集方法
Keywords
SARimage segmentationthe active contour modelthe level set method