首页> 外文期刊>International Journal of Wavelets, Multiresolution and Information Processing >ROI-BASED 3D HUMAN BRAIN MAGNETIC RESONANCE IMAGES COMPRESSION USING ADAPTIVE MESH DESIGN AND REGION-BASED DISCRETE WAVELET TRANSFORM
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ROI-BASED 3D HUMAN BRAIN MAGNETIC RESONANCE IMAGES COMPRESSION USING ADAPTIVE MESH DESIGN AND REGION-BASED DISCRETE WAVELET TRANSFORM

机译:自适应网格设计和基于区域的离散小波变换的基于ROI的3D人体磁共振图像压缩

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摘要

Due to the large volume required for medical images for transmission and archiving purposes, the compression of medical images is known as one of the main concepts of medical image processing. Lossless compression methods have the drawback of a low compression ratio. In contrast, lossy methods have a higher compression ratio and suffer from lower quality of the reconstructed images in the receiver. Recently, some selective compression methods have been proposed in which the main image is divided into two separate regions: Region of Interest (ROI), which should be compressed in a lossless manner, and Region of Background (ROB), which is compressed in a lossy manner with a lower quality. In this research, we introduce a new selective compression method to compress 3D brain MR images. To this aim, we design an adaptive mesh on the first slice and estimate the gray levels of the next slices by computing the mesh element's deformations. After computing the residual image, which is the difference between the main image and the estimated one, we transform it to the wavelet domain using a region-based discrete wavelet transform (RBDWT). Finally, the wavelet coefficients are coded by an object-based SPIHT coder.
机译:由于用于传输和归档目的的医学图像所需的体积大,因此医学图像的压缩被称为医学图像处理的主要概念之一。无损压缩方法具有压缩率低的缺点。相反,有损方法具有较高的压缩率,并且接收器中的重建图像的质量较低。近来,已经提出了一些选择性压缩方法,其中将主图像划分为两个单独的区域:应以无损方式压缩的感兴趣区域(ROI)和以非压缩方式压缩的背景区域(ROB)。有损方式,质量较低。在这项研究中,我们介绍了一种新的选择性压缩方法来压缩3D脑部MR图像。为此,我们在第一个切片上设计了一个自适应网格,并通过计算网格元素的变形来估计下一个切片的灰度级。在计算出残差图像(即主图像和估计图像之间的差异)之后,我们使用基于区域的离散小波变换(RBDWT)将其转换为小波域。最后,小波系数由基于对象的SPIHT编码器编码。

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