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首页> 外文期刊>Computers in Biology and Medicine >Hybrid facial image feature extraction and recognition for non-invasive chronic fatigue syndrome diagnosis
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Hybrid facial image feature extraction and recognition for non-invasive chronic fatigue syndrome diagnosis

机译:混合人脸图像特征提取与识别在非侵入性慢性疲劳综合征诊断中的应用

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Due to an absence of reliable biochemical markers, the diagnosis of chronic fatigue syndrome (CFS) mainly relies on the clinical symptoms, and the experience and skill of the doctors currently. To improve objectivity and reduce work intensity, a hybrid facial feature is proposed. First, several kinds of appearance features are identified in different facial regions according to clinical observations of traditional Chinese medicine experts, including vertical striped wrinkles on the forehead, puffiness of the lower eyelid, the skin colour of the cheeks, nose and lips, and the shape of the mouth corner. Afterwards, such features are extracted and systematically combined to form a hybrid feature. We divide the face into several regions based on twelve active appearance model (AAM) feature points, and ten straight lines across them. Then, Gabor wavelet filtering, CIELab color components, threshold-based segmentation and curve fitting are applied to extract features, and Gabor features are reduced by a manifold preserving projection method. Finally, an AdaBoost based score level fusion of multi-modal features is performed after classification of each feature. Despite that the subjects involved in this trial are exclusively Chinese, the method achieves an average accuracy of 89.04% on the training set and 88.32% on the testing set based on the K-fold cross-validation. In addition, the method also possesses desirable sensitivity and specificity on CFS prediction. (C) 2015 Elsevier Ltd. All rights reserved.
机译:由于缺乏可靠的生化指标,慢性疲劳综合症(CFS)的诊断主要依靠临床症状以及当前医生的经验和技能。为了提高客观性并减少工作强度,提出了一种混合面部特征。首先,根据中医专家的临床观察,在不同的面部区域可以识别出几种外观特征,包括额头上的垂直条纹皱纹,下眼睑浮肿,脸颊,鼻子和嘴唇的皮肤颜色以及嘴角的形状。之后,提取这些特征并系统地组合以形成混合特征。我们基于十二个活动外观模型(AAM)特征点和十条横跨它们的直线将面部分为几个区域。然后,将Gabor小波滤波,CIELab颜色分量,基于阈值的分割和曲线拟合应用于提取特征,并通过流形保留投影方法来缩小Gabor特征。最终,在对每个特征进行分类之后,执行基于AdaBoost的多模式特征得分等级融合。尽管参与该试验的受试者仅是中国人,但基于K折交叉验证,该方法在训练集上的平均准确率达到89.04%,在测试集上的平均准确率达到88.32%。另外,该方法还具有对CFS预测的期望的敏感性和特异性。 (C)2015 Elsevier Ltd.保留所有权利。

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