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Retinal Area Segmentation using Adaptive Superpixalation and its Classification using RBFN

机译:使用自适应超像素化的视网膜区域分割及其基于RBFN的分类

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Retinal disease is the very important issue in medical field. To diagnose the disease, it needs to detect the true retinal area. Artefacts like eyelids and eyelashes are come along with retinal part so removal of artefacts is the big task for better diagnosis of disease into the retinal part. In this paper, we have proposed the segmentation and use machine learning approaches to detect the true retinal part. Preprocessing is done on the original image using Gamma Normalization which helps to enhance the image that can gives detail information about the image. Then the segmentation is performed on the Gamma Normalized image by Superpixel method. Superpixel is the group of pixel into different regions which is based on compactness and regional size. Superpixel is used to reduce the complexity of image processing task and provide suitable primitive image pattern. Then feature generation must be done and machine learning approach helps to extract true retinal area. The experimental evaluation gives the better result with accuracy of 96%.
机译:视网膜疾病是医学领域中非常重要的问题。为了诊断该疾病,它需要检测真实的视网膜区域。眼睑和睫毛等伪影会随视网膜一起出现,因此去除伪影是更好地诊断视网膜部分疾病的主要任务。在本文中,我们提出了分割方法,并使用机器学习方法来检测真正的视网膜部分。使用Gamma规范化对原始图像进行预处理,这有助于增强图像,从而可以提供有关图像的详细信息。然后,通过超像素方法对Gamma规范化图像进行分割。超像素是基于紧凑性和区域大小的分成不同区域的像素组。超像素用于降低图像处理任务的复杂性并提供合适的原始图像图案。然后必须完成特征生成,并且机器学习方法有助于提取真实的视网膜区域。实验评估以96%的精度给出了更好的结果。

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