SAR image segmentation algorithms based on I-divergence-TV model
This work addresses segmentation of SAR images with multiplicative noise, which is a domain-specific problem in remote sensing, and appears incremental as it builds on existing models and techniques.
The authors tackled SAR image segmentation under multiplicative gamma noise by proposing a variational active contour model that combines edge-based and region-based approaches, resulting in a fast fixed point algorithm that is robust and efficient compared to state-of-the-art methods.
In this paper, we propose a novel variational active contour model based on I-divergence-TV model to segment Synthetic aperture radar (SAR) images with multiplicative gamma noise, which hybrides edge-based model with region-based model. The proposed model can efficiently stop the contours at weak or blurred edges, and can automatically detect the exterior and interior boundaries of images. We incorporate the global convex segmentation method and split Bregman technique into the proposed model, and propose a fast fixed point algorithm to solve the global convex segmentation question[25]. [25] is submitted on 29-Aug-2013, and our early edition ever submitted to TGRS on 12-Jun-2012, Venkatakrishnan et al. [26] proposed their 'pnp algorithm' on 29-May-2013, so Venkatakrishnan and we proposed the 'pnp algorithm' almost simultaneously. Experimental results for synthetic images and real SAR images show that the proposed fast fixed point algorithm is robust and efficient compared with the state-of-the-art approach.