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Segmentation of Medical Images with a Combination of Convolutional Operators and Adaptive Hidden Markov Model

机译:卷积算子和自适应隐马尔可夫模型相结合的医学图像分割

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Medical image segmentation is a problem of fundamental importance in medical image processing. The accurate segmentation of a medical image can provide important information for the diagnosis and treatment of many diseases. Since a medical image often contains noises and the objects in it are inherently complex in general, methods that can accurately segment an arbitrary medical image are still unavailable. In this paper, a new approach that combines convolutional operators and an adaptive Hidden Markov Model is developed for the segmentation of medical images. Specifically, the features associated with each pixel in a medical image are obtained with a set of convolutional operators. The semantic and spatial correlations among pixels in the image are then progressively captured by an adaptive Hidden Markov Model. The labels of the pixels can be efficiently obtained with a dynamic programming algorithm in linear time. Our experimental results show that this approach can achieve segmentation results with improved accuracy on a set of brain medical images.
机译:医学图像分割是医学图像处理中最重要的问题。医学图像的准确分割可以为许多疾病的诊断和治疗提供重要信息。由于医学图像通常包含噪声,并且其中的对象通常固有地很复杂,因此仍然无法使用能够精确分割任意医学图像的方法。本文提出了一种将卷积算子和自适应隐马尔可夫模型相结合的新方法,用于医学图像的分割。具体地,与医学图像中的每个像素相关联的特征是通过一组卷积算子获得的。然后,通过自适应隐马尔可夫模型逐渐捕获图像中像素之间的语义和空间相关性。像素的标签可以通过线性时间的动态编程算法有效地获得。我们的实验结果表明,该方法可以在一组脑部医学图像上以更高的精度获得分割结果。

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