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Depression severity prediction from facial expression based on the DRR_DepressionNet network

机译:基于DRR_DepresspentNet网络的面部表情预测抑制严重性预测

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Depression has become one of the serious mental health diseases in the world. The computer vision-based methods are expected to assist the clinical diagnosis of depression more efficiently and objectively, but the lack of clinical data and the low accuracy of recognition have hindered the broad application of automatic depression diagnosis. Given the shortcomings in predicting depression, this paper proposed a deep network based on the deep residual regression network to predict the severity of depression from facial expressions, named Deep Residual Regression Convolutional Neural Networks (DRR_DepressionNet). We firstly enhanced the original facial images to expanse the training data. Then we use these training data, which carry different feature information, to train a deep regression residual network (ResNet). Unlike the traditional ResNet network, we divided the network into three major modules, namely C_M block, Resblock, and GAP. We also replaced the cross-entropy loss function in the traditional structure by the Euclidean loss function as the basis for training the network. Finally, we applied the trained network to predict the Beck Depression Inventory (BDI) score of new subjects to reflect the severity of depression. The experiments were validated on AVEC2013 and AVEC2014 depression data, respectively. The experimental results showed that compared with the state-of-the-art performance, the proposed method could improve the RMSE and MAE by 2.4% and 0.3% respectively on the AVCE2013 data set, and improve the RMSE and MAE by 0.3% and 1.1% respectively on AVCE2014 data set.
机译:抑郁症已成为世界上严重的心理健康的疾病之一。计算机基于视觉的方法,有望更有效,更客观地帮助抑郁症的临床诊断,但缺乏临床数据和识别的精度低,阻碍自动抑郁症的诊断的广泛应用。鉴于预测抑郁的缺点,提出了一种基于深残留回归网络上的深网络,从面部表情预测抑郁症的严重程度,命名为深残余回归卷积神经网络(DRR_DepressionNet)。我们首先加强了原来的面部图像,以粉墙训练数据。然后我们使用这些培训资料,携带不同的特征信息,培养了深厚的回归残差网络(RESNET)。不同于传统的网络RESNET,我们把网络分成三大模块,即C_M块,Resblock和GAP。我们还通过欧几里德损失函数作为网络训练的基础上取代了传统结构的交叉熵损失函数。最后,我们应用了训练的网络来预测新科贝克抑郁量表(BDI)得分,以反映抑郁症的严重程度。分别实验进行了验证上AVEC2013和AVEC2014压低数据。表明,随着国家的最先进的性能相比,所提出的方法可以通过2.4%和0.3%分别提高对AVCE2013数据集的RMSE和MAE,和由0.3%和1.1提高RMSE和MAE的实验结果%分别AVCE2014数据集。

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