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Image Based Detection of Craniofacial Abnormalities using Feature Extraction by Classical Convolutional Neural Network

机译:基于图像的经典卷积神经网络特征提取颅面异常

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The ubiquitous approach of transfer learning for feature extraction is harnessed for image based detection of two types of craniofacial abnormalities: pediatric cleft and craniosynostosis. In the current study, using features extracted from pre-trained AlexNet activations, we train a multi class support vector machine (SVM) for cleft lip abnormality and developed a multi-view classifier using max voting for craniosynostosis anomaly detection. We achieved Area under the ROC curve (AUC) value of 0.95 for cleft abnormality and 0.84 for craniosynostosis.
机译:利用转移学习的普遍方法进行特征提取,可用于基于图像的两种类型的颅面异常检测:小儿left裂和颅突狭窄。在当前的研究中,使用从预先训练的AlexNet激活中提取的特征,我们训练了用于唇裂异常的多类支持向量机(SVM),并开发了使用最大投票数的多视图分类器,用于颅骨突触异常检测。对于裂隙异常,我们在ROC曲线下的面积(AUC)值达到0.95,而对于颅骨前突,则达到0.84。

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