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首页> 外文期刊>Journal of Medical Engineering >Application of Principal Component Analysis in Automatic Localization of Optic Disc and Fovea in Retinal Images
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Application of Principal Component Analysis in Automatic Localization of Optic Disc and Fovea in Retinal Images

机译:主成分分析在视网膜视盘和中央凹自动定位中的应用

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A retinal image has blood vessels, optic disc, fovea, and so forth as the main components of an image. Segmentation of these components has been investigated extensively. Principal component analysis (PCA) is one of the techniques that have been applied to segment the optic disc, but only a limited work has been reported. To our knowledge, fovea segmentation problem has not been reported in the literature using PCA. In this paper, we are presenting the segmentation of optic disc and fovea using PCA. The PCA was trained on optic discs and foveae using ten retinal images and then applied on seventy retinal images with a success rate of 97% in case of optic discs and 94.3% in case of fovea. Conventional algorithms feed one patch at a time from a test retinal image, and the next patch separated by one pixel part is fed. This process is continued till the full image area is covered. This is time consuming. We are suggesting techniques to cut down the processing time with the help of binary vessel tree of a given test image. Results are presented to validate our idea.
机译:视网膜图像具有血管,视盘,中央凹等作为图像的主要组成部分。这些成分的细分已被广泛研究。主成分分析(PCA)是已应用于分割光盘的技术之一,但仅报道了有限的工作。据我们所知,文献中尚未报道使用PCA的中央凹分割问题。在本文中,我们提出了使用PCA进行视盘和中央凹的分割。使用十个视网膜图像对PCA进行了视盘和中央凹的训练,然后将其应用于70个视网膜图像,视盘的成功率为97%,中央凹的成功率为94.3%。常规算法一次从测试视网膜图像中馈入一个补丁,然后馈送由一个像素部分分隔的下一个补丁。继续此过程,直到覆盖整个图像区域。这很费时间。我们建议使用一些技术来减少给定测试图像的二叉血管树的处理时间。结果表明了我们的想法。

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