基于多尺度和超分辨率的医学图像分割

En-Ui Lin, Michel McLaughlin, A. Alshehri
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引用次数: 9

摘要

在许多医学成像应用中,从低分辨率图像中清晰地描绘和分割感兴趣的区域是至关重要的。它是图像处理中最困难和最具挑战性的任务之一,直接决定了图像分析最终结果的质量。在准备分割时,我们首先使用预处理方法去除噪声和模糊,然后使用超分辨率生成高分辨率图像。接下来,我们将使用小波将图像分解成不同的子带图像。特别是,我们将使用离散小波变换(DWT)及其增强版本双密度对偶离散树小波变换(D3-DWT),因为它们提供了更好的图像表示的空间和光谱定位,并且对图像处理应用,特别是医学成像具有特别重要的意义。然后通过迭代过程过滤来自子带的多尺度边缘信息,生成显示提取的特征和边缘的地图,然后用于分割同质区域。我们已经将我们的算法应用于具有挑战性的应用,如磁共振成像(MRI)图像中的灰质和白质分割。
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Medical image segmentation using multi-scale and super-resolution method
In many medical imaging applications, a clear delineation and segmentation of areas of interest from low resolution images is crucial. It is one of the most difficult and challenging tasks in image processing and directly determines the quality of final result of the image analysis. In preparation for segmentation, we first use preprocessing methods to remove noise and blur and then we use super-resolution to produce a high resolution image. Next, we will use wavelets to decompose the image into different sub-band images. In particular, we will use discrete wavelet transformation (DWT) and its enhanced version double density dual discrete tree wavelet transformations (D3-DWT) as they provide better spatial and spectral localization of image representation and have special importance to image processing applications, especially medical imaging. The multi-scale edge information from the sub-bands is then filtered through an iterative process to produce a map displaying extracted features and edges, which is then used to segment homogenous regions. We have applied our algorithm to challenging applications such as gray matter and white matter segmentations in Magnetic Resonance Imaging (MRI) images.
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