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A Level Set Method Combined with Gaussian Mixture Model for Image Segmentation

机译:一种级别集方法与图像分割的高斯混合模型相结合

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Chan-Vese (CV) model promotes the evolution of level set curve based on the gray distribution inside and outside the curve. It has a better segmentation effect on images with intensity homogeneity and obvious contrast. However, when the gray distribution of image is uneven, the evolution speed of the curve will be significantly slower, and the curve will be guided to the wrong segmentation result. To solve this problem, a method to improve CV model by using of Gaussian mixture model (GMM) is proposed. We use the parameters of the Gaussian submodels to correct the mean value of grayscale inside and outside the curve in the energy function. The target region can be quickly segmented in the images with complex background gray distribution. Experimental results show that the proposed algorithm can significantly reduce the number of iterations and enhance the robustness to noise. The level set curve can quickly evolve into target region in the images with intensity inhomogeneity.
机译:Chan-Vese(CV)模型促进基于曲线内外灰色分布的水平集曲线的演变。它对具有强度均匀性和明显对比的图像具有更好的分割效果。然而,当图像的灰色分布不均匀时,曲线的进化速度将显着较慢,并且曲线将被引导到错误的分段结果。为了解决这个问题,提出了一种通过使用高斯混合模型(GMM)来改进CV模型的方法。我们使用高斯子模型的参数来校正能量功能内外曲线内外灰度的平均值。目标区域可以在具有复杂背景灰色分布的图像中快速分段。实验结果表明,该算法可以显着降低迭代的数量,增强噪音的鲁棒性。电平集曲线可以快速地发展到具有强度不均匀性的图像中的目标区域。

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