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The Lee-Seo model with regularization term for bimodal image segmentation

机译:具有正则项的Lee-Seo模型用于双峰图像分割

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In this paper, we improve Lee-Seo' bimodal image segmentation model using a regularization term. This regularization term will maintain the smoothness of the level set function and decrease the level set function' oscillations around the desired steady state when the noise level is lager. Furthermore, we also provide a rigorous study of the modified model. Based on techniques in calculus of variations, the existence of solutions of the modified model in BV space is established. Based on the theory we present (see Lemmas 2 and 3), we constructed a fast convergent algorithm to process images. It turns out our method is twice fast in processing an image than Lee-Seo's algorithm with the same constant value initial level set function.
机译:在本文中,我们使用正则化项改进了Lee-Seo的双峰图像分割模型。当噪声电平较大时,该正则项将保持电平设置函数的平滑度并减少电平设置函数在所需稳定状态附近的振荡。此外,我们还对修改后的模型进行了严格的研究。基于变异微积分技术,建立了BV空间中修正模型解的存在性。基于我们提出的理论(请参阅引理2和3),我们构造了一种快速收敛的算法来处理图像。事实证明,与具有相同常数值初始水平设置功能的Lee-Seo算法相比,我们的方法在处理图像方面快两倍。

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