Correcting Automatic Cataract Diagnosis Systems Against Noisy/Blur Environment

T. Pratap, Priyanka Kokil
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引用次数: 2

Abstract

In this paper, a methodology to improve the performance of existing automatic cataract detection systems (ACDS) in noisy/blur environment is proposed. The presented approach consists of dual-threshold based image quality evaluation module to enhance the performance diminution of ACDS in noisy/blur environment. Initially the first threshold is obtained from naturalness image quality evaluator (NIQE) and then second threshold is achieved through noise level estimation (NLE). In order to ensure robustness, the proposed method is evaluated with artificially created noise and blur datasets in association with existing pre-trained convolution neural network based ACDS. The experiments results show superiority in performance over existing methods in literature.
针对噪声/模糊环境的白内障自动诊断校正系统
本文提出了一种改进现有白内障自动检测系统(ACDS)在噪声/模糊环境下性能的方法。该方法由基于双阈值的图像质量评估模块组成,以增强ACDS在噪声/模糊环境下的性能衰减。首先通过自然图像质量评估器(NIQE)获得第一个阈值,然后通过噪声水平估计(NLE)获得第二个阈值。为了确保鲁棒性,将人工产生的噪声和模糊数据集与现有的基于ACDS的预训练卷积神经网络相关联,对所提出的方法进行了评估。实验结果表明,该方法的性能优于文献中已有的方法。
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