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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Level set evolution with locally linear classification for image segmentation
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Level set evolution with locally linear classification for image segmentation

机译:水平集进化与局部线性分类的图像分割

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摘要

This paper presents a novel local region-based level set model for image segmentation. In each local region, we define a locally weighted least squares energy to fit a linear classifier. With level set representation, these local energy functions are then integrated over the whole image domain to develop a global segmentation model. The objective function in this model is thereafter minimized via level set evolution. In this process, the parameters related to the locally linear classifier are iteratively estimated. By introducing the locally linear functions to separate background and foreground in local regions, our model not only achieves accurate segmentation results, but also is robust to initialization. Extensive experiments are reported to demonstrate that our method holds higher segmentation accuracy and more initialization robustness, compared with the classical region-based and local region-based methods.
机译:本文提出了一种新颖的基于局部区域的图像分割水平集模型。在每个局部区域中,我们定义一个局部加权的最小二乘能量以拟合线性分类器。使用水平集表示,然后将这些局部能量函数整合到整个图像域中,以开发全局分割模型。此后,该模型中的目标函数通过水平集演化而被最小化。在该过程中,与局部线性分类器有关的参数被迭代地估计。通过引入局部线性函数来分离局部区域的背景和前景,我们的模型不仅实现了准确的分割结果,而且对初始化具有鲁棒性。据报道,广泛的实验表明,与传统的基于区域和基于局部区域的方法相比,我们的方法具有更高的分割精度和更大的初始化鲁棒性。

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