基于肺图像阈值分割方法的图像变换

Sahat Sonang Sitanggang, Y. Yuhandri, Adil Setiawan
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引用次数: 1

摘要

图像转换对于获取和查找以前不知道的关于图像的某些信息(如像素、几何形状、大小和颜色)非常重要。在此基础上,本研究旨在分析使用阈值和分割方法产生更好值的图像变换。分割过程基于两种颜色模型,即色调饱和度值(HSV)和红绿蓝(RGB)。本研究使用的图像数据是来自www.fk.unair.ac.id的肺部x射线图像。使用Matlab 2021a应用程序进行处理,以帮助分析过程。在本案例进行的图像分割分析结果上,图像数据中使用的HSV和RGB阈值越大,检测到的图像分割结果越好、越清晰。换句话说,生成的阈值的大小极大地影响了生成图像的质量、亮度、大小和颜色。当阈值HSV = 0.9, RGB = 9时,肺x线图像分割效果最佳。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Transformation With Lung Image Thresholding and Segmentation Method
Image transformation is important to obtain and find certain information about an image that was not previously known, such as pixels, geometry, size, and color. Following this, this research aims to analyze image transformation in producing better values using threshold and segmentation methods. The segmentation process is carried out based on two color models, namely hue saturation value (HSV) and red green blue (RGB). The image data used in this study was the x-ray image of the lungs from www.fk.unair.ac.id. which is processed using the Matlab 2021a application to help the analysis process.  on the results of the image segmentation analysis carried out in this case, the greater the HSV and RGB threshold values used in the image data, the better and clearer the segmentation of the detected image results. In other words, the size of the thresholding value generated greatly affects the quality, brightness, size, and color of the resulting image. The best lung X-ray image segmentation results were obtained when using the threshold values HSV = 0.9 and RGB = 9.  
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