基于改进活动轮廓和contourlet变换的脑磁共振图像分割

P. Reddy, C. Rao, C. Satyanarayana
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引用次数: 9

摘要

由于多分辨率分析可以在分割分辨率和尺度空间下表示图像,因此常用于图像表示和处理。本文提出了一种结合contourlet变换和改进活动轮廓模型的医学图像分割算法。该方法利用轮廓波变换的系数来表示图像,提出了一种新的能量表达式。这样可以使轮廓快速准确地向目标边界收敛。采用轮廓波变换的医学图像分割方法对磁共振图像的弱边缘和模糊边缘有明显的改善。与传统的水平集和变分水平集进行医学图像分割相比,该方法的计算复杂度更小。contourlet变换的特殊性质是在每个子带中保留方向信息,并通过计算其能量来捕获方向信息。这种能量能够在细节上增强弱的和复杂的边界。从各项性能指标上比较了contourlet变换医学图像分割算法与其他可变形模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BRAIN MR IMAGE SEGMENTATION BY MODIFIED ACTIVE CONTOURS AND CONTOURLET TRANSFORM
Multiresolution analysis is often used for image representation and processing because it can represent image at the split resolution and scale space. In this paper, a novel medical image segmentation algorithm is proposed that combines contourlet transform and modified active contour model. This method has a new energy formulation by representing the image with the coefficients of a contourlet transform. This results fast and accurate convergence of the contour towards the object boundary. Medical image segmentation using contourlet transforms has shown significant improvement towards the weak and blurred edges of the Magnetic Resonance Image (MRI). Also, the computational complexity is less compared to using traditional level sets and variational level sets for medical image segmentation. The special property of the contourlet transform is that, the directional information is preserved in each sub-band and is captured by computing its energy. This energy is capable of enhancing weak and complex boundaries in details. Performance of medical image segmentation algorithm using contourlet transform is compared with other deformable models in terms of various performance measures.
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