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A Comparison of Handcrafted and Deep Neural Network Feature Extraction for Classifying Optical Coherence Tomography (OCT) Images

机译:手工和深层神经网络特征提取对光学相干断层扫描(OCT)图像进行分类的比较

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Optical Coherence Tomography allows ophthalmologist to obtain cross-section imaging of eye retina. Assisted with digital image analysis methods, effective disease detection could be performed. Various methods exist to extract feature from OCT images. The proposed study aims to compare the effectiveness of handcrafted and deep neural network features. The dataset consists of 32339 instances which are distributed in four classes. The feature extractors are Histogram of Oriented Gradient (HOG), Local Binary Pattern (LBP), DenseNet-169, and ResNet50. As a result, the deep neural network based methods outperformed the handcrafted feature with 88% and 89% accuracy for DenseNet and ResNet compared to 50 % and 42 % for HOG and LBP respectively. The deep neural network based methods also demonstrated better result on the under represented classes.
机译:光学相干断层扫描可以使眼科医生获得视网膜的横截面成像。借助数字图像分析方法,可以进行有效的疾病检测。存在多种从OCT图像提取特征的方法。拟议的研究旨在比较手工和深度神经网络功能的有效性。该数据集包含32339个实例,这些实例分布在四个类别中。特征提取器是定向梯度直方图(HOG),局部二进制模式(LBP),DenseNet-169和ResNet50。结果,基于深度神经网络的方法在DenseNet和ResNet上的准确度达到了88%和89%,优于手工完成的功能,而HOG和LBP分别为50%和42%。基于深度神经网络的方法在下面表示的类上也显示出更好的结果。

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