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      Social Group Optimization Supported Segmentation and Evaluation of Skin Melanoma Images

      , , ,
      Symmetry
      MDPI AG

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          A new method for gray-level picture thresholding using the entropy of the histogram

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            Localizing region-based active contours.

            In this paper, we propose a natural framework that allows any region-based segmentation energy to be re-formulated in a local way. We consider local rather than global image statistics and evolve a contour based on local information. Localized contours are capable of segmenting objects with heterogeneous feature profiles that would be difficult to capture correctly using a standard global method. The presented technique is versatile enough to be used with any global region-based active contour energy and instill in it the benefits of localization. We describe this framework and demonstrate the localization of three well-known energies in order to illustrate how our framework can be applied to any energy. We then compare each localized energy to its global counterpart to show the improvements that can be achieved. Next, an in-depth study of the behaviors of these energies in response to the degree of localization is given. Finally, we show results on challenging images to illustrate the robust and accurate segmentations that are possible with this new class of active contour models.
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              A methodological approach to the classification of dermoscopy images.

              In this paper a methodological approach to the classification of pigmented skin lesions in dermoscopy images is presented. First, automatic border detection is performed to separate the lesion from the background skin. Shape features are then extracted from this border. For the extraction of color and texture related features, the image is divided into various clinically significant regions using the Euclidean distance transform. This feature data is fed into an optimization framework, which ranks the features using various feature selection algorithms and determines the optimal feature subset size according to the area under the ROC curve measure obtained from support vector machine classification. The issue of class imbalance is addressed using various sampling strategies, and the classifier generalization error is estimated using Monte Carlo cross validation. Experiments on a set of 564 images yielded a specificity of 92.34% and a sensitivity of 93.33%.
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                Author and article information

                Journal
                SYMMAM
                Symmetry
                Symmetry
                MDPI AG
                2073-8994
                February 2018
                February 22 2018
                : 10
                : 2
                : 51
                Article
                10.3390/sym10020051
                b74a642c-cd91-4aa7-90e6-be082209c593
                © 2018

                https://creativecommons.org/licenses/by/4.0/

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