A fast segmentation method based on constraint optimization and its applications: Intensity inhomogeneity and texture segmentation

Pattern Recognition(2011)

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摘要
We propose a new constraint optimization energy and an iteration scheme for image segmentation which is connected to edge-weighted centroidal Voronoi tessellation (EWCVT). We show that the characteristic functions of the edge-weighted Voronoi regions are the minimizers (may not unique) of the proposed energy at each iteration. We propose a narrow banding algorithm to accelerate the implementation, which makes the proposed method very fast. We generalize the CVT segmentation to hand intensity inhomogeneous and texture segmentation by incorporating the global and local image information into the energy functional. Compared with other approaches such as level set method, the experimental results in this paper have shown that our approach greatly improves the calculation efficiency without losing segmentation accuracy.
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关键词
texture segmentation,segmentation accuracy,proposed energy,level set method,fast algorithm,edge-weighted centroidal voronoi tessellation,image segmentation,cvt segmentation,intensity inhomogeneity,iteration scheme,edge-weighted voronoi region,centroidal voronoi tessellation,intensity inhomogeneous,new constraint optimization energy,constraint optimization,fast segmentation method,characteristic function
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