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A template matching technique for artifacts detection in retinal images

机译:视网膜图像中伪影检测模板匹配技术

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The continuous development of automatic retinal diseases diagnosis systems based on image processing has shown their potential for clinical practice. However, the accuracy of these systems is often compromised, mainly due to the intrinsic difficulty in detecting the abnormal structures and also due to deficiencies in the image acquisition which affects image quality. Light flares are one of such deficiencies that usually don't compromise the overall image quality, but can be misclassified by an automatic diagnosis system. In this article a method is proposed for detecting light artifacts (flares) on retinal images. The output from the light artifact detection is a binary image mask that is useful to reject those pixels from being further processed. The proposed method uses a template matching algorithm to detect artifacts similar to the predefined template artifact images. Two main types of light artifacts were identified: light flares and the central artifact. To reduce over-segmentation the light artifact candidates are characterized by their shape and color and are classified by a decision tree. The method was developed using a dataset of 61 images from which 20 were used for the classifier training and the remaining 41 for independent testing. With the test dataset the method obtained an average sensitivity/false detection per image pairs of 0.97/0.12 for the central artifact and 0.73/0.36 for the light flares, what were considered good results regarding the heterogeneity of the dataset which contain low and high quality images.
机译:基于图像处理的自动视网膜疾病诊断系统的连续发展显示了它们对临床实践的潜力。然而,这些系统的准确性通常受到损害,主要是由于检测异常结构的内在困难以及影响图像质量的图像采集中的缺陷。光耀斑是通常不会损害整体图像质量的这种缺陷之一,但可以通过自动诊断系统进行错误分类。在本文中,提出了一种方法,用于检测视网膜图像上的光伪像(斑点)。来自光伪像检测的输出是二进制图像掩模,其可用于拒绝进一步处理的那些像素。该提出的方法使用模板匹配算法来检测类似于预定义模板伪影图像的伪像。确定了两种主要类型的光伪影:轻耀斑和中央伪影。为了减少过分分割,光伪像候选的特征在于它们的形状和颜色,并由决策树分类。该方法是使用61图像的数据集开发的,其中20个图像用于分类器训练和剩余的41用于独立测试。利用测试数据集,该方法对于中央伪像的每次图像对的平均灵敏度/误报检测为0.97 / 0.12,对于灯光耀斑,0.73 / 0.36,关于包含低质量和高质量的数据集的异质性的良好结果图片。

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