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Glaucoma Detection using Tetragonal Local Octa Patterns and SVM from Retinal Images

机译:使用四方本地Octa模式和SVM从视网膜图像中的青光眼检测

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Glaucoma is a fatal disease caused by the imbalance of intraocular pressure inside the eye which can result in lifetime blindness of the victim. Efficient screening systems require experts to manually analyze the images to recognize the disease. However, the challenging nature of the screening method and lack of trained human resources, effective screening-oriented treatment is an expensive task. The automated systems are trying to cope with these challenges; however, these methods are not generalized well to large datasets and real-world scenarios. Therefore, we have introduced an automated glaucoma detection system by employing the concept of the Content-Based Image Retrieval (CBIR) domain. The Tetragonal Local Octa Pattern (T LOP) is used for features computation which is employed to train the SVM classifier to show the technique significance. We have evaluated our method over challenging datasets namely, Online Retinal Fundus Image (ORIGA) and High-Resolution Fundus (HRF). Both the qualitative and quantitative results show that our technique outperforms the latest approaches due to the effective localization power of T-LOP as it computes the anatomy independent features and ability of Support Vector Machine (SVM) to deal with over-fitted training data. Therefore, the presented technique can play an important role in the automated recognition of glaucoma lesions and can be applied to other medical diseases as well.
机译:青光眼是一种致命的疾病,由眼内的眼内压力失衡引起,这可能导致受害者的寿命失明。有效的筛选系统需要专家手动分析图像以识别疾病。然而,筛选方法的挑战性质和缺乏培训的人力资源,有效的筛查治疗是一项昂贵的任务。自动化系统正在努力应对这些挑战;然而,这些方法对大型数据集和现实世界的情景没有很好地概括。因此,我们通过采用基于内容的图像检索(CBIR)域的概念来引入自动青光眼检测系统。四方本地Octa图案(T LOP)用于特征计算,用于训练SVM分类器以显示技术意义。我们已经在挑战性数据集中评估了我们的方法,即在线视网膜眼底图像(ORIGA)和高分辨率基底(HRF)。定性和定量结果都表明,由于T-LOP的有效本地化功率,我们的技术优于最新方法,因为它计算了支持向量机(SVM)的解剖学独立特征和能力来处理过度拟合的训练数据。因此,呈现的技术可以在葡萄糖损伤的自动识别中发挥重要作用,并且也可以应用于其他医学疾病。

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