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Internal Generative Mechanism Based Otsu Multilevel Thresholding Segmentation for Medical Brain Images

机译:基于内部生成机制的Otsu多级阈值分割医学脑图像

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Recent brain theories indicate that perceiving an image visually is an active inference procedure of the brain by using the Internal Generative Mechanism (IGM). Inspired by the theory, an IGM based Otsu multilevel thresholding algorithm for medical images is proposed in this paper, in which the Otsu thresholding technique is implemented on both the original image and the predicted version obtained by simulating the IGM on the original image. A regrouping measure is designed to refining the segmentation result The proposed method takes the predicted visual information generated by the complicated Human Visual System (HVS) into account, as well as the details. Experiments on medical MR-T2 brain images are conducted to demonstrate the effectiveness of the proposed method. The experimental results indicate that the IGM based Otsu multilevel thresholding is superior to the other multilevel thresholdings.
机译:最近的大脑理论表明,通过使用内部生成机制(IGM),视觉感知图像是大脑的主动推理过程。受该理论的启发,本文提出了一种基于IGM的医学图像Otsu多级阈值算法,该算法对原始图像和通过对原始图像进行IGM仿真得到的预测版本均采用Otsu阈值技术。设计了一种重组措施以细化分割结果。该方法考虑了复杂的人类视觉系统(HVS)生成的预测视觉信息以及细节。进行了医学MR-T2脑图像实验,以证明该方法的有效性。实验结果表明,基于IGM的Otsu多级阈值优于其他多级阈值。

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