噪声非均匀图像分割的相对熵预拟合模型

C. M. A. Rahman, H. Nyeem
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引用次数: 2

摘要

本文报道了一种改进的主动轮廓模型(ACM)用于图像分割。尽管ACMs技术取得了长足的发展,但其对噪声和非均匀图像的处理性能仍然不足。为了解决分割过程中存在的强度不均匀性和噪声问题,提出了一种新的活动轮廓局部预拟合方法。利用局部强度估计构造了两幅局部预拟合图像,并利用相对熵测度定义了局部能量函数,该函数提供了这些图像与原始图像的统计信息。从而加快了模型的轮廓演化速度,提高了模型的抗噪性。对于所有测试图像,无论有无噪声和强度不均匀性,所提出的模型都具有更好的初始化鲁棒性、更快的轮廓演化和更高的分割精度。
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Relative Entropy Pre-Fitting Model for Noisy and Intensity Inhomogeneous Image Segmentation
This paper reports an improved Active Contour Model (ACM) for image segmentation. Despite the significant development of the ACMs, their performances for the noisy and intensity-inhomogeneous images are still deficient. To tackle the intensity-inhomogeneity and noises in segmentation, new construction of local pre-fitting for evolving active contours is proposed. Two locally pre-fitted images are constructed from the local intensity estimation, and the relative entropy measures are used to define the local energy functional that provides statistical information of these images with the original image. Thereby, the desired contour evolution of the proposed model is expedited, and its noise-immunity is increased. The proposed model has demonstrated more initialization robustness, faster contour evolution and higher segmentation accuracy over the prominent ACMs for all the test images both with and without noise and intensity-inhomogeneity.
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