Additive and multiplicative piecewise-smooth segmentation models
نویسندگان
چکیده
We propose new models to segment images corrupted by additive or multiplicative noise, in a variational level set approach. In the additive case, we decompose the data into the sum . Here, is a piecewise-constant component, capturing edges and discontinuities, and it is modeled in a level set approach, while is a smooth component, capturing the intensity inhomogeneities. The additive noise is removed from the initial data. In the multiplicative case, we introduce two new models: first, we propose a new piecewise-constant segmentation model of the data corrupted by multiplicative noise, in a multiphase level set approach. The fidelity term is chosen appropriately for such degradation model. Then, we extend this model to piecewise-smooth segmentation, decomposing the data into the product , where again is piecewise-constant, while is smooth. Experimental results on synthetic and real images are presented.
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