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Active contour driven by multi-scale local binary fitting and Kullback-Leibler divergence for image segmentation

机译:由多尺度局部二值拟合和Kullback-Leibler发散驱动的主动轮廓用于图像分割

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Image segmentation is an important processing in many applications such as image retrieval and computer vision. One of the most successful models for image segmentation is the level set methods which are based on local context. The methods, though comparatively effective in segmenting images with inhomogeneous intensity, are considerably computation-intensive and at the risk of falling into local minima in the convergence of the active contour energy function. To address the issues, we propose a region-based level set method, called KL-MLBF, which is based on the multi-scale local binary fitting (MLBF) and the Kullback-Leibler (KL) divergence. We first apply the multi-scale theory to the local binary fitting model to build MLBF. Then the energy term measured by KL divergence between regions to be segmented is incorporated into the energy function of MLBF. KL-MLBF utilizes the between-cluster distance and the adaptive kernel function selection strategy to formulate the energy function. Being more robust to the initial location of the contour than the classical segmentation models, KL-MLBF can deal with blurry boundaries and noise problems. The results of experiments on synthetic and real images have shown that KL-MLBF can improve the effectiveness of segmentation while ensuring the accuracy by accelerating the minimization of the energy function.
机译:图像分割是许多应用程序中的重要处理,例如图像检索和计算机视觉。用于图像分割的最成功模型之一是基于局部上下文的水平集方法。该方法尽管在分割强度不均匀的图像方面比较有效,但计算量很大,并且存在有效轮廓能量函数收敛的局部极小值的风险。为了解决这些问题,我们提出了一种基于区域的水平集方法,称为KL-MLBF,该方法基于多尺度局部二进制拟合(MLBF)和Kullback-Leibler(KL)散度。我们首先将多尺度理论应用于局部二元拟合模型以建立MLBF。然后,将要分割的区域之间的KL散度测量的能量项合并到MLBF的能量函数中。 KL-MLBF利用簇间距离和自适应核函数选择策略来制定能量函数。与传统的分割模型相比,KL-MLBF对轮廓的初始位置更加稳健,可以处理模糊的边界和噪声问题。在合成图像和真实图像上的实验结果表明,KL-MLBF可以通过加速能量函数的最小化来提高分割效果,同时确保准确性。

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