Hybrid CNN-SVM classifier for efficient depression detection system

Afef Saidi, S. B. Othman, S. B. Saoud
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引用次数: 28

Abstract

Depression is a serious debilitating mental disorder affecting people from all ages all over the world. The number of depression cases increases annually in a continuous way. Due to the complexity of traditional techniques based on clinical diagnosis, there is a need for an automatic detection system of the depression. In this paper we present a novel audio-based approach to automatically detect depression using hybrid model. This model combines convolutional neural networks (CNN) and support vector machines (SVM), where SVM takes the place of the fully connected layers in CNN. In this proposed model, the features are automatically extracted using CNN and the classification is done using the SVM classifier. This approach was evaluated using DAIC-WOZ dataset provided by AVEC 2016 depression analysis sub-challenge. Experimental results showed that our hybrid model achieved an accuracy of 68% which outperform the CNN model (58.57%). Compared to the previous audio-based works using the same DAIC-WOZ dataset, our work showed a significant improvement in terms of accuracy, precision and recall.
基于CNN-SVM混合分类器的高效凹陷检测系统
抑郁症是一种严重的使人衰弱的精神障碍,影响着全世界各个年龄段的人。抑郁症病例的数量每年都在持续增加。由于基于临床诊断的传统技术的复杂性,需要一种抑郁症的自动检测系统。本文提出了一种基于音频的基于混合模型的抑郁症自动检测方法。该模型结合了卷积神经网络(CNN)和支持向量机(SVM),其中SVM代替了CNN中的全连接层。在该模型中,使用CNN自动提取特征,使用SVM分类器进行分类。使用AVEC 2016洼地分析子挑战提供的DAIC-WOZ数据集对该方法进行了评估。实验结果表明,混合模型的准确率达到68%,优于CNN模型的58.57%。与之前使用相同的DAIC-WOZ数据集的基于音频的工作相比,我们的工作在准确性、精密度和召回率方面都有显着提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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