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      A novel region-based active contour model via local patch similarity measure for image segmentation

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      Multimedia Tools and Applications
      Springer Science and Business Media LLC

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          A First-Order Primal-Dual Algorithm for Convex Problems with Applications to Imaging

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            Active contours without edges.

            We propose a new model for active contours to detect objects in a given image, based on techniques of curve evolution, Mumford-Shah (1989) functional for segmentation and level sets. Our model can detect objects whose boundaries are not necessarily defined by the gradient. We minimize an energy which can be seen as a particular case of the minimal partition problem. In the level set formulation, the problem becomes a "mean-curvature flow"-like evolving the active contour, which will stop on the desired boundary. However, the stopping term does not depend on the gradient of the image, as in the classical active contour models, but is instead related to a particular segmentation of the image. We give a numerical algorithm using finite differences. Finally, we present various experimental results and in particular some examples for which the classical snakes methods based on the gradient are not applicable. Also, the initial curve can be anywhere in the image, and interior contours are automatically detected.
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              Minimization of Region-Scalable Fitting Energy for Image Segmentation

              Intensity inhomogeneities often occur in real-world images and may cause considerable difficulties in image segmentation. In order to overcome the difficulties caused by intensity inhomogeneities, we propose a region-based active contour model that draws upon intensity information in local regions at a controllable scale. A data fitting energy is defined in terms of a contour and two fitting functions that locally approximate the image intensities on the two sides of the contour. This energy is then incorporated into a variational level set formulation with a level set regularization term, from which a curve evolution equation is derived for energy minimization. Due to a kernel function in the data fitting term, intensity information in local regions is extracted to guide the motion of the contour, which thereby enables our model to cope with intensity inhomogeneity. In addition, the regularity of the level set function is intrinsically preserved by the level set regularization term to ensure accurate computation and avoids expensive reinitialization of the evolving level set function. Experimental results for synthetic and real images show desirable performances of our method.
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                Author and article information

                Journal
                Multimedia Tools and Applications
                Multimed Tools Appl
                Springer Science and Business Media LLC
                1380-7501
                1573-7721
                September 2018
                February 8 2018
                September 2018
                : 77
                : 18
                : 24097-24119
                Article
                10.1007/s11042-018-5697-y
                9415574b-1f22-4ea9-9470-04efed47ea21
                © 2018

                http://www.springer.com/tdm

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