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Prior distribution-based statistical active contour model

机译:基于先验分布的统计活动轮廓模型

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摘要

Employing prior information can greatly improve the segmentation result of many image segmentation problems. For example, a commonly used prior information is the shape of the object. In this paper, we introduce a different kind of prior information called the prior distribution. On the basis of non-parametric statistical active contour model, we add prior distribution energy to build a novel prior active contour model. During the convergence of contour curve, distribution difference between the inside and outside of the active contour is maximized while the distribution difference between the inside/outside of contour and the prior object/background is minimized. Furthermore, in order to improve the computation speed, a method to accelerate the computation speed is also proposed, which significantly relieves the burden of estimating probability density functions. As the experimental results suggest, satisfactory effects can be achieved in the segmentation of synthetic images and natural images via the our algorithm. Compared with the traditional non-parametric statistical active contour model without prior information, our method achieves a distinct improvement in both accuracy and computation efficiency.
机译:利用先验信息可以大大改善许多图像分割问题的分割结果。例如,常用的先验信息是物体的形状。在本文中,我们介绍了另一种称为先验分布的先验信息。在非参数统计主动轮廓模型的基础上,我们增加了先验分布能量,建立了一个新颖的先验主动轮廓模型。在轮廓曲线收敛期间,活动轮廓的内部和外部之间的分布差异最大,而轮廓的内部/外部与先前的对象/背景之间的分布差异最小。此外,为了提高计算速度,还提出了一种加快计算速度的方法,该方法大大减轻了估计概率密度函数的负担。如实验结果所示,通过我们的算法,可以在合成图像和自然图像的分割中获得令人满意的效果。与没有先验信息的传统非参数统计主动轮廓模型相比,我们的方法在准确性和计算效率上都有了明显的提高。

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