首页> 外文会议>Conference on Medical Imaging 2008: Computer-Aided Diagnosis; 20080219-21; San Diego,CA(US) >Improvement of Automatic Hemorrhages Detection Methods using Brightness Correction on Fundus Images
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Improvement of Automatic Hemorrhages Detection Methods using Brightness Correction on Fundus Images

机译:眼底图像亮度校正的自动出血检测方法的改进

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We have been developing several automated methods for detecting abnormalities in fundus images. The purpose of this study is to improve our automated hemorrhage detection method to help diagnose diabetic retinopathy. We propose a new method for preprocessing and false positive elimination in the present study. The brightness of the fundus image was changed by the nonlinear curve with brightness values of the hue saturation value (HSV) space. In order to emphasize brown regions, gamma correction was performed on each red, green, and blue-bit image. Subsequently, the histograms of each red, blue, and blue-bit image were extended. After that, the hemorrhage candidates were detected. The brown regions indicated hemorrhages and blood vessels and their candidates were detected using density analysis. We removed the large candidates such as blood vessels. Finally, false positives were removed by using a 45-feature analysis. To evaluate the new method for the detection of hemorrhages, we examined 125 fundus images, including 35 images with hemorrhages and 90 normal images. The sensitivity and specificity for the detection of abnormal cases was were 80% and 88%, respectively. These results indicate that the new method may effectively improve the performance of our computer-aided diagnosis system for hemorrhages.
机译:我们已经开发了几种自动方法来检测眼底图像中的异常。这项研究的目的是改进我们的自动出血检测方法,以帮助诊断糖尿病性视网膜病。我们在本研究中提出了一种预处理和假阳性消除的新方法。眼底图像的亮度通过具有色度饱和度值(HSV)空间的亮度值的非线性曲线而改变。为了强调棕色区域,对每个红色,绿色和蓝色位图像执行了伽玛校正。随后,扩展了每个红色,蓝色和蓝色位图像的直方图。之后,检测出出血候选者。棕色区域表示出血和血管,使用密度分析检测其候选对象。我们删除了血管等大型候选对象。最后,使用45特征分析消除了误报。为了评估检测出血的新方法,我们检查了125个眼底图像,包括35个有出血的图像和90个正常图像。检测异常病例的敏感性和特异性分别为80%和88%。这些结果表明,该新方法可以有效地改善我们的计算机辅助出血诊断系统的性能。

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