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A Variational Framework for Multiregion Pairwise-Similarity-Based Image Segmentation

机译:基于多区域成对相似度图像分割的变分框架

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摘要

Variational cost functions that are based on pairwise similarity between pixels can be minimized within level set framework resulting in a binary image segmentation. In this paper we extend such cost functions and address multi-region image segmentation problem by employing a multi-phase level set framework. For multi-modal images cost functions become more complicated and relatively difficult to minimize. We extend our previous work, proposed for background/foreground separation, to the segmentation of images in more than two regions. We also demonstrate an efficient implementation of the curve evolution, which reduces the computational time significantly. Finally, we validate the proposed method on the Berkeley Segmentation Data Set by comparing its performance with other segmentation techniques.
机译:可以在级别集框架内最小化基于像素之间成对相似性的变分成本函数,从而实现二进制图像分割。在本文中,我们扩展了这种成本函数,并通过采用多阶段水平集框架解决了多区域图像分割问题。对于多模式图像,成本函数变得更加复杂并且相对难以最小化。我们将为背景/前景分离提议的先前工作扩展到两个以上区域的图像分割。我们还演示了曲线演化的有效实现方式,它可以显着减少计算时间。最后,通过将其性能与其他细分技术进行比较,我们对伯克利细分数据集验证了该方法的有效性。

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