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首页> 外文期刊>Measurement >MRI brain lesion image detection based on color-converted K-means clustering segmentation
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MRI brain lesion image detection based on color-converted K-means clustering segmentation

机译:基于颜色转换K均值聚类分割的MRI脑病变图像检测

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We present a preliminary design and experimental results of tumor objects tracking method for magnetic resonance imaging (MRI) brain images (some stock images) that utilizes color-converted segmentation algorithm with K-means clustering technique. The method is capable of solving unable exactly contoured lesion objects problem in MRI image by adding the color-based segmentation operation. The key idea of color-converted segmentation algorithm with K-means is to solve the given MRI image by converting the input gray-level image into a color space image and operating the image labeled by cluster index. In this paper we investigate the possibility of employing this approach for image-based-MRI application. The application of the proposed method for tracking tumor is demonstrated to help pathologists distinguish exactly lesion size and region.
机译:我们提出了一种利用磁共振成像(MRI)脑图像(一些股票图像)的肿瘤对象跟踪方法的初步设计和实验结果,该方法利用K均值聚类技术进行了颜色转换分割算法。通过添加基于颜色的分割操作,该方法能够解决MRI图像中无法精确轮廓的病变对象的问题。使用K均值进行颜色转换的分割算法的关键思想是通过将输入的灰度图像转换为色彩空间图像并操​​作由聚类索引标记的图像来求解给定的MRI图像。在本文中,我们研究了将这种方法用于基于图像的MRI应用的可能性。结果表明,所提出的方法可用于追踪肿瘤,以帮助病理学家准确区分病变的大小和区域。

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