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Combining learning-based intensity distributions with nonparametric shape priors for image segmentation

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Abstract

Integration of shape prior information into level set formulations has led to great improvements in image segmentation in the presence of missing information, occlusion, and noise. However, most shape-based segmentation techniques incorporate image intensity through simplistic data terms. A common underlying assumption of such data terms is that the foreground and the background regions in the image are homogeneous, i.e., intensities are piecewise constant or piecewise smooth. This situation makes integration of shape priors inefficient in the presence of intensity inhomogeneities. In this paper, we propose a new approach for combining information from shape priors with that from image intensities. More specifically, our approach uses shape priors learned by nonparametric density estimation and incorporates image intensity distributions learned in a supervised manner. Such a combination has not been used in previous work. Sample image patches are used to learn the intensity distributions, and segmented training shapes are used to learn the shape priors. We present an active contour algorithm that takes these learned densities into account for image segmentation. Our experiments on synthetic and real images demonstrate the robustness of the proposed approach to complicated intensity distributions, and occlusions, as well as the improvements it provides over existing methods.

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Notes

  1. The subscript “CV” is used to refer to the first letters of the last names of the authors of [3].

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Acknowledgments

This work was partially supported by the Scientific and Technological Research Council of Turkey (TUBITAK) through a graduate fellowship.

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Correspondence to Abdurrahim Soğanlı.

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Soğanlı, A., Uzunbaş, M.G. & Çetin, M. Combining learning-based intensity distributions with nonparametric shape priors for image segmentation. SIViP 8, 789–798 (2014). https://doi.org/10.1007/s11760-013-0599-y

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  • DOI: https://doi.org/10.1007/s11760-013-0599-y

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