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A Novel Coarse-to-fine Level Set Framework for Ultrasound Image Segmentation

机译:用于超声图像分割的新型粗型细层面集框架

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Ultrasound image segmentation is a fundamental but undoubtedly challenging problem in many medical applications due to various unpleasant artifacts, e.g., noise, low contrast and intensity inhomogeneity. This paper presents a coarse-to-fine framework for ultrasound image segmentation based on a preprocessing step via speckle reducing anisotropic diffusion (SRAD) and a modified version of Chan-Vese model by proposing novel evolution functional involving the Sobolev gradient. SRAD is a diffusion method tailored for ultrasound image denoising, and is adopted here to construct a despeckled image which allows us to obtain a coarse segmentation of the input image by carrying out our proposed CV model. This coarse segmentation will be further used by our level set model as a constraint to guide the fine segmentation. We compare the proposed model with some famous region-based level set methods. Experimental results in both synthetic and clinical ultrasound images validate the high accuracy and robustness of our approach, indicating its potential for practical applications in ultrasound imaging.
机译:超声图像分割是由于各种令人不愉快的伪影,例如噪声,低对比度和强度不均匀性的许多医学应用中的基本但无疑是挑战性问题。本文介绍了通过散斑减少各向异性扩散(SRAD)和Chan-VESE模型的预处理步骤的预处理步骤,通过提出涉及SoboLev梯度的新型演进功能,提出了基于预处理步骤的粗细框架。 SRAD是针对超声图像去噪量身定制的扩散方法,并且在此采用以构造除了开挖的图像,该图像允许我们通过执行所提出的CV模型来获得输入图像的粗略分割。我们的级别集模型将进一步使用该粗略分割作为指导细分分割的约束。我们将提出的模型与一些基于名称的基于地区的级别设置进行比较。合成和临床超声图像的实验结果验证了我们方法的高精度和稳健性,表明其对超声成像中的实际应用的潜力。

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