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Comparative analysis of image classification methods for automatic diagnosis of ophthalmic images

机译:对眼科图像自动诊断的图像分类方法的比较分析

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There are many image classification methods, but it remains unclear which methods are most helpful for analyzing and intelligently identifying ophthalmic images. We select representative slit-lamp images which show the complexity of ocular images as research material to compare image classification algorithms for diagnosing ophthalmic diseases. To facilitate this study, some feature extraction algorithms and classifiers are combined to automatic diagnose pediatric cataract with same dataset and then their performance are compared using multiple criteria. This comparative study reveals the general characteristics of the existing methods for automatic identification of ophthalmic images and provides new insights into the strengths and shortcomings of these methods. The relevant methods (local binary pattern +SVMs, wavelet transformation +SVMs) which achieve an average accuracy of 87% and can be adopted in specific situations to aid doctors in preliminarily disease screening. Furthermore, some methods requiring fewer computational resources and less time could be applied in remote places or mobile devices to assist individuals in understanding the condition of their body. In addition, it would be helpful to accelerate the development of innovative approaches and to apply these methods to assist doctors in diagnosing ophthalmic disease.
机译:有许多图像分类方法,但仍不清楚哪种方法对于分析和智能地识别眼科图像最有用。我们选择代表性的狭缝灯图像,其显示眼图像的复杂性作为研究材料,以比较用于诊断眼科疾病的图像分类算法。为了促进本研究,一些特征提取算法和分类器组合到自动诊断与相同数据集的儿科白内障,然后使用多标准进行比较它们的性能。该比较研究揭示了现有方法的全自动识别眼科图像的一般特征,并为这些方法的优点和缺点提供了新的见解。达到平均精度为87%的相关方法(局部二进制模式+ SVM,小波变换+ SVM),可以在特定情况下采用初步疾病筛查的特定情况。此外,需要更少计算资源和更少时间的一些方法可以应用于远程位置或移动设备中,以帮助个人理解身体的状况。此外,加快创新方法的发展并应用这些方法可以帮助医生诊断眼科疾病。

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