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Image Segmentation Based on High-Order MRF Model with Robust Local Spatial Information

机译:基于具有鲁棒局部空间信息的高阶MRF模型的图像分割

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Traditional low-order regional Markov Random Fields (MRF)model is difficult to accurately describe the global connectivity of complex natural images and often leads to the over-smoothing of the segmentation results. To solve this problem, a high-order MRF image segmentation model with robust local spatial information is proposed. Firstly, the proposed model introduces the local spatial relationship of the image by using the Hamming distance between the neighborhood pixels in the local region, then establishes a weighted Gaussian mixture likelihood feature between the label space and the pixel intensity field, which provides the local spatial consistency constraint; Secondly, the spatial global constraint relationship of the far away distance is introduced based on the Robust Pn model, and the regional label consistency constraint of the MRF image segmentation model is established. Finally, based on Bayesian theory, a high-order MRF energy model with robust local spatial information for image segmentation is proposed, and the proposed model is optimized by Gibbs sampling algorithm. Compared with Traditional low-order regional MRF model, experimental result shows that the proposed model can provide a better segmentation.
机译:传统的低阶区域马尔可夫随机场(MRF)模型很难准确地描述复杂自然图像的全局连通性,并且常常导致分割结果的过度平滑。为了解决这个问题,提出了具有鲁棒局部空间信息的高阶MRF图像分割模型。该模型首先利用局部区域中相邻像素之间的汉明距离来引入图像的局部空间关系,然后在标签空间与像素强度场之间建立加权的高斯混合似然特征,从而提供图像的局部空间。一致性约束;其次,基于鲁棒P引入了远距离的空间全局约束关系 n 建立了MRF图像分割模型的区域标签一致性约束。最后,基于贝叶斯理论,提出了具有鲁棒局部空间信息的高阶MRF能量模型用于图像分割,并通过Gibbs采样算法对该模型进行了优化。实验结果表明,与传统的低阶区域MRF模型相比,该模型可以提供更好的分割效果。

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