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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >An improved region-based model with local statistical features for image segmentation
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An improved region-based model with local statistical features for image segmentation

机译:具有局部统计特征的基于区域的改进模型用于图像分割

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摘要

In this paper, we propose a new region-based active contour model (ACM) for image segmentation. In particular, this model utilizes an improved region fitting term to partition the regions of interests in images depending on the local statistics regarding the intensity and the magnitude of gradient in the neighborhood of a contour. By this improved region fitting term, images with noise, intensity non-uniformity, and low-contrast boundaries can be well segmented. Integrated with the duality theory and the anisotropic diffusion process based on structure tensor, a new regularization term is defined through the duality formulation to penalize the length of active contour. By this new regularization term, the structural information of images is utilized to improve the ability of capturing the geometric features such as corners and cusps. From a numerical point of view, we minimize the energy function of our model by an efficient dual algorithm, which avoids the instability and the non-differentiability of traditional numerical solutions, e.g. the gradient descent method. Experiments on medical and natural images demonstrate the advantages of the proposed model over other segmentation models in terms of both efficiency and accuracy.
机译:在本文中,我们提出了一种新的基于区域的主动轮廓模型(ACM)进行图像分割。特别地,该模型利用改进的区域拟合项,根据关于轮廓附近的强度和梯度大小的局部统计信息,划分图像中的感兴趣区域。通过这种改进的区域拟合项,可以很好地分割具有噪声,强度不均匀和低对比度边界的图像。结合对偶理论和基于结构张量的各向异性扩散过程,通过对偶公式定义了一个新的正则化项,以惩罚有效轮廓的长度。通过这个新的正则化术语,可以利用图像的结构信息来提高捕获诸如拐角和尖端的几何特征的能力。从数值的角度来看,我们通过高效的对偶算法最小化了模型的能量函数,从而避免了传统数值解的不稳定性和不可微性,例如梯度下降法。在医学和自然图像上的实验证明了该模型在效率和准确性方面均优于其他分割模型。

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