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An image segmentation method based on the fusion of vector quantization and edge detection with applications to medical image processing

机译:基于矢量量化和边缘检测融合的图像分割方法及其在医学图像处理中的应用

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摘要

In the existing segmentation algorithms, most of them take single pixel as processing unit and segment an image mainly based on the gray value information of the image pixels. However, the spatially structural information between pixels of an image provides even more important information of the image. In order to effectively exploit both the gray value and the spatial information of image pixels, this paper proposes a fusion method for image segmentation by jointly utilizing vector quantization and edge detection methods. In the method, the image to be segmented is divided into small sub-blocks with each sub-block constituting a vector and the vectors are classified into two patterns, called the edge pattern and non-edge pattern, by using an edge detection algorithm. The image is then processed further, in which a Boundary Detection (BD) algorithm is developed for extracting the refined boundary curves in the edge pattern vectors and a Vector Quantization (VQ) approach is presented for segmenting the non-edge pattern vectors. In addition, an SOM neural network is proposed for realizing the VQ algorithm adap-tively. Finally, a fusion scheme is designed to synthesize the results of VQ and BD to accomplish the segmentation. Simulation experiments and comparison studies have been conducted with applications to medical image processing in the paper, and the results validate the effectiveness of the proposed method.
机译:在现有的分割算法中,大多数都是以单个像素为处理单元,主要基于图像像素的灰度值信息对图像进行分割。然而,图像的像素之间的空间结构信息提供了图像的甚至更重要的信息。为了有效地利用图像像素的灰度值和空间信息,本文提出了一种融合矢量量化和边缘检测方法的图像分割融合方法。在该方法中,通过使用边缘检测算法将要分割的图像划分成小的子块,每个子块构成一个向量,并且将这些向量分为两个模式,称为边缘模式和非边缘模式。然后对图像进行进一步处理,其中开发了边界检测(BD)算法以提取边缘图案矢量中的精炼边界曲线,并提出了用于量化非边缘图案矢量的矢量量化(VQ)方法。另外,提出了一种SOM神经网络来自适应地实现VQ算法。最后,设计了一种融合方案来合成VQ和BD的结果以完成分割。本文进行了仿真实验和比较研究,并将其应用于医学图像处理,结果证明了该方法的有效性。

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