基于融合卷积神经网络的面部特征自动抑郁检测

Renuka Acharya, Soumya P. Dash
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引用次数: 1

摘要

临床抑郁症是影响当今世界相当一部分人口的关键医疗条件之一。本文提出了一种基于深度学习工具的新技术,用于有效检测潜在患者的临床抑郁症。提出了一种新的算法来标记最近的AFEW-VA数据集,根据不同个体的视频帧的效价和唤醒值来创建抑郁类和非抑郁类。此外,从分类数据集中提取全面部区域、眼睛区域和嘴巴区域作为感兴趣区域(roi),利用迁移学习方法训练三个不同的预训练2DCNN模型,即ResNet50、VGG16和InceptionV3。针对每一种2D-CNN结构,提出了一种新的算法来合并在三个roi上训练的模型。可以看出,在获得更高的抑郁检测精度方面,合并所有三个roi的合并模型优于单个模型或仅合并三个roi中的两个的合并模型。我们还观察到,与VGG16和InceptionV3架构相比,基于ResNet50架构的合并模型获得了0.95的最佳精度值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Depression Detection Based on Merged Convolutional Neural Networks using Facial Features
Clinical depression is one of the crucial medical conditions affecting a substantial portion of today’s world population. This paper proposes a novel technology based on deep learning tools for efficient detection of clinical depression in potential patients. A novel algorithm is proposed to label a recent AFEW-VA dataset in terms of creating the depressed class and the non-depressed class based on the valence and arousal values for various individuals from their video frames. Furthermore, the full facial regions, the eye regions, and the mouth regions from the classified dataset are extracted as the regions of interest (ROIs) to be utilized to train three different pre-trained 2DCNN models, namely, ResNet50, VGG16, and InceptionV3 by using transfer learning. For each 2D-CNN architecture, a novel algorithm is proposed to merge the models trained on the three ROIs. It is observed that the merged model, combining all the three ROIs outperforms the individual models or a merged model merging only two of the three ROIs in terms of obtaining a higher accuracy of depression detection. It is also observed that the merged models based on the ResNet50 architecture results in the best accuracy value of 0.95 as compared to the VGG16 and InceptionV3 architectures.
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