A Novel Level Set Model Originated from Fuzzy Connectedness Guided Initial Contours

Yiwei Liu, Peirui Bai, Chang Li, Yue Zhao
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Abstract

Level set models are widely used in the image segmentation field. However, the sensitivity of the initial contours and the manual adjustment of the controlling parameters have limited the segmentation performance. To effectively solve this problem, a novel level set model utilizing both intensity and spatial information is proposed in this paper. Firstly, the fuzzy connectedness (FC) algorithm is applied to obtain the appropriate initial contours, and as a result the complexity and computation cost of building initial contours is reduced. Secondly, based on the morphological characteristics of the initial contours and the parameters of fuzzy connectedness, several equations are proposed to automatically estimate the controlling parameters of the level set evolution and avoid human intervention. Finally, the region-scalable fitting (RSF) model is adopted to evolve and obtain the final robust segmentation results. The efficiency and accuracy of the model proposed in this paper is verified by comparing the three quantitative indexes of time, Dice similarity coefficient (DSC) and peak signal to noise ratio (PSNR) with four different initialized level set models.
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一种基于模糊连通性引导初始轮廓的水平集模型
水平集模型在图像分割领域得到了广泛的应用。然而,初始轮廓的敏感性和控制参数的手动调整限制了分割性能。为了有效地解决这一问题,本文提出了一种同时利用强度和空间信息的水平集模型。首先,利用模糊连通性(FC)算法获得合适的初始轮廓,降低了初始轮廓的构建复杂度和计算量;其次,根据初始轮廓的形态特征和模糊连度参数,提出了自动估计水平集进化控制参数的方程,避免了人为干预;最后,采用区域可扩展拟合(RSF)模型进行演化,得到最终的鲁棒分割结果。通过对比四种不同初始化水平集模型的时间、Dice相似系数(DSC)和峰值信噪比(PSNR)三个定量指标,验证了本文模型的有效性和准确性。
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