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Deep residual-network-based quality assessment for SD-OCT retinal images: preliminary study

机译:SD-OCT视网膜视网膜图像的深度残余网络质量评估:初步研究

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摘要

Optical coherence tomography (OCT) is widely used as an imaging technique for in vivo imaging of the human retina in clinical ophthalmology. For reliable clinical measurements, the quality of the OCT images needs to be sufficient. Hence, quality evaluation of OCT images is necessary. Although some quality assessment algorithms for OCT images have been proposed, their performance still needs to be improved. To the best of our knowledge, there is still no OCT image quality assessment algorithm based on deep learning framework. To address the OCT image quality assessment issue, we proposed an objective OCT image quality assessment (IQA) using Residual Networks (ResNets) combined with support vector regression (SVR) in this paper. A dataset of 482 OCT images is constructed, and the images quality are scored by the clinic experts. The pre-trained deep residual network from ImageNet is slightly revised and then fine-tuned to extract the features from OCT images. Then, the extracted features from the images and their corresponding subjective rating scores are used to learn the non-linear map with Support Vector Regression (SVR). To evaluate the performance of the proposed method, the correlation coefficients between the predicted score and the subjective rating score are utilized. And the experimental result demonstrates that the proposed algorithm is highly efficient in the OCT image quality assessment.
机译:光学相干断层扫描(OCT)被广泛用作临床眼科人视网膜体内成像的成像技术。对于可靠的临床测量,OCT图像的质量需要足够。因此,需要OCT图像的质量评估。尽管已经提出了OCT图像的一些质量评估算法,但它们的性能仍然需要得到改善。据我们所知,仍然没有基于深度学习框架的OCT图像质量评估算法。为解决OCT图像质量评估问题,我们提出了使用剩余网络(Resnets)的目标OCT图像质量评估(IQA)与本文的支持向量回归(SVR)相结合。构建了482 OCT图像的数据集,诊所专家评分图像质量。从ImageNet预先接受过的深度剩余网络略微修改,然后微调以提取OCT图像的特征。然后,来自图像的提取特征及其相应的主观评分分数用于学习具有支持向量回归(SVR)的非线性图谱。为了评估所提出的方法的性能,利用预测得分与主观评级分数之间的相关系数。实验结果表明,所提出的算法在OCT图像质量评估中高效。

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