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Multicue iSraph Mincut for Image Segmentation

机译:用于图像分割的Multicue iSraph Mincut

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We propose a general framework to encode various grouping cues for natural image segmentation. We extend the classical Gibbs energy of an MRF to three terms: likelihood energy, coherence energy and separating energy. We encode generative cues in the likelihood and coherence energy to ensure the goodness and feasibility of segmentation, and embed discriminative cues in the separating energy to encourage assigning two pixels with strong separability with different labels. We use a self-validated process to iteratively minimize the global Gibbs energy. Our approach is able to automatically determine the number of segments, and produce a natural hierarchy of coarse-to-fine segmentation. Experiments show that our approach works well for various segmentation problems, and outperforms existing methods in terms of robustness to noise and preservation of soft edges.
机译:我们提出了一个通用框架来对自然图像分割的各种分组提示进行编码。我们将MRF的经典吉布斯能量扩展为三个术语:似然能量,相干能量和分离能量。我们在可能性和相干能量中编码生成线索,以确保分割的良好性和可行性,并在区分能量中嵌入判别线索,以鼓励为两个像素分配具有不同标签的强可分离性。我们使用自我验证的过程来迭代地最小化全局吉布斯能量。我们的方法能够自动确定细分的数量,并生成自然的从粗到细细分的层次结构。实验表明,我们的方法适用于各种分割问题,并且在抗噪性和保留软边缘方面优于现有方法。

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