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Classification of Cataract Slit-Lamp Image Based on Machine Learning

机译:基于机器学习的白内障狭缝图像分类

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Cataracts are diseases caused by the presence of proteins in the lens that form abnormal and gradually enlarged clumps that will interfere with vision by blocking the light entering through the lens. Identification of cataracts is done by taking the image of the eye with a slit-lamp tool from the front of the eye. Slit-lamp images can provide information about the condition of the pupils that can only be analyzed by the doctor manually based on doctor's observation and doctor's experience that can cause different analysis in determining the actual eye condition. Things that are considered by the doctor in analyzing cataracts are the level of opacity in the eyes and the area covered by the turbid. Identification and classification with slit-lamp images can be performed better and more accurately using image processing techniques. Firstly, the grayscale method, median filter method and canny method is used to preprocess the slit-lamp images. Next, the hough circular method is used to automatically segment pupil from slit-lamp images. After the segmentation process, we use pixel scanning to extract mean intensity and uniformity from the pupil image. After the feature extraction process, classification is done by single perceptron based on the extracted feature. This research is expected to help the doctor to do cataracts classification so that the classification process will be easier and more accurate. Based on the test result show that the accuracy of the system is 96.6%.
机译:白内障是由透镜中存在蛋白质引起的疾病,这些蛋白质形成异常和逐渐扩大的团块,通过阻挡进入通过透镜的光来干扰视觉。通过从眼睛的前部用狭缝灯工具拍摄眼睛的图像来完成白内障的识别。狭缝灯图像可以提供有关瞳孔状况的信息,只能根据医生的观察和医生的经验可以在医生的观察和医生的经验中可以在确定实际的眼部条件下引起不同的分析。医生在分析白内障时考虑的事情是眼中的不透明度和浑浊的区域。使用图像处理技术可以更好,更准确地执行与狭缝灯图像的识别和分类。首先,使用灰度方法,中值滤波器方法和Canny方法来预处理狭缝灯图像。接下来,霍夫循环方法用于自动从狭缝图像中分段瞳孔。在分割过程之后,我们使用像素扫描来提取瞳孔图像的平均强度和均匀性。在特征提取过程之后,基于提取的特征通过单个Perceptron完成分类。这项研究有望帮助医生进行白内障分类,以便分类过程更容易,更准确。基于测试结果表明,系统的准确性为96.6%。

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