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Enhanced Hidden Markov Models for accelerating medical volumes segmentation

机译:增强型隐马尔可夫模型,用于加速医疗量分割

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A fully automated unsupervised image segmentation method using Hidden Markov Models (HMMs) is proposed to segment medical volumes. The application of this system to medical volumes has been evaluated using NEMA IE body phantom and a comparison study has been carried out to evaluate HMM and other segmentation techniques which reveal thatHMMdelivers promising results in terms of accurate region of interest detection. Computational time is the main issue to tackle in HMMs, a solution has been proposed and evaluated with respect to the effects of the accelerators on the system accuracy.
机译:提出了一种使用隐马尔可夫模型(HMM)的全自动无监督图像分割方法来分割医学量。已使用NEMA IE人体模型评估了该系统在医疗量中的应用,并进行了比较研究以评估HMM和其他分割技术,这些技术揭示了HMM在准确的感兴趣区域检测方面可提供令人鼓舞的结果。计算时间是HMM中要解决的主要问题,已经针对加速器对系统精度的影响提出了一种解决方案并进行了评估。

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