论文标题
通过深度学习的混合多模式融合模型估算抑郁状态
Depression Status Estimation by Deep Learning based Hybrid Multi-Modal Fusion Model
论文作者
论文摘要
轻度抑郁症的初步检测可以极大地帮助有效治疗常见的精神疾病。由于缺乏适当的意识以及社会中存在的污名和误解的充分结合,因此心理健康状况估计已成为一项真正艰巨的任务。由于角色级别的特征在人之间的巨大差异,传统的深度学习方法无法在现实世界中概括。在我们的研究中,我们旨在创建人类的ALIED AI工作流程,该工作流程可以有效地适应特定的用户,并在现实世界中有效地执行。我们提出了一种混合深度学习方法,结合了一个镜头学习,经典监督深度学习方法和人类联盟相互作用以适应的本质。为了捕获最大的信息并使用有效的诊断视频,音频和文本方式。我们的混合融合模型在数据集上的高精度为96.3%。并获得了0.9682的AUC,这证明了其在复杂的现实世界中歧视类别的鲁棒性,以确保在诊断过程中不会错过轻度抑郁症的病例。所提出的方法部署在基于云的智能手机应用程序中,以进行健壮测试。通过特定于用户的改编和艺术方法的状态,我们提出了一个具有用户友好体验的最先进模型。
Preliminary detection of mild depression could immensely help in effective treatment of the common mental health disorder. Due to the lack of proper awareness and the ample mix of stigmas and misconceptions present within the society, mental health status estimation has become a truly difficult task. Due to the immense variations in character level traits from person to person, traditional deep learning methods fail to generalize in a real world setting. In our study we aim to create a human allied AI workflow which could efficiently adapt to specific users and effectively perform in real world scenarios. We propose a Hybrid deep learning approach that combines the essence of one shot learning, classical supervised deep learning methods and human allied interactions for adaptation. In order to capture maximum information and make efficient diagnosis video, audio, and text modalities are utilized. Our Hybrid Fusion model achieved a high accuracy of 96.3% on the Dataset; and attained an AUC of 0.9682 which proves its robustness in discriminating classes in complex real-world scenarios making sure that no cases of mild depression are missed during diagnosis. The proposed method is deployed in a cloud-based smartphone application for robust testing. With user-specific adaptations and state of the art methodologies, we present a state-of-the-art model with user friendly experience.