Alzheimer's disease (AD) constitutes a neurodegenerative disease with serious consequences to peoples' everyday lives, if it is not diagnosed early since there is no available cure. Alzheimer's is the most common cause of dementia, which constitutes a general term for loss of memory. Due to the fact that dementia affects speech, existing research initiatives focus on detecting dementia from spontaneous speech. However, little work has been done regarding the conversion of speech data to Log-Mel spectrograms and Mel-frequency cepstral coefficients (MFCCs) and the usage of pretrained models. Concurrently, little work has been done in terms of both the usage of transformer networks and the way the two modalities, i.e., speech and transcripts, are combined in a single neural network. To address these limitations, first we represent speech signal as an image and employ several pretrained models, with Vision Transformer (ViT) achieving the highest evaluation results. Secondly, we propose multimodal models. More specifically, our introduced models include Gated Multimodal Unit in order to control the influence of each modality towards the final classification and crossmodal attention so as to capture in an effective way the relationships between the two modalities. Extensive experiments conducted on the ADReSS Challenge dataset demonstrate the effectiveness of the proposed models and their superiority over state-of-the-art approaches.
翻译:阿尔茨海默氏病(AD)是一种神经退化性疾病,对人们日常生活产生严重后果,如果没有现成的治疗方法,这种疾病如果不被早期诊断,就会对人们的日常生活产生严重后果。阿尔茨海默氏病是痴呆最常见的致痴呆症最常见的原因,这是记忆丧失的一个一般术语。由于痴呆症影响言语,现有的研究举措侧重于检测自发言中的痴呆症。然而,在将语音数据转换为日志-兆谱和梅尔频率阴性系数(MFCCs)以及使用预先培训的模式方面,没有做多少工作。与此同时,在使用变异器网络和两种模式(即语音和笔录)相结合的方式方面所做的工作很少。为了克服这些局限性,我们首先将语音信号作为图像,并采用若干事先经过训练的模型,由Vision变异器(VIT)取得最高评价结果。第二,我们提出的多式联运模型包括Gated多式单元,以便控制两种模式对最后分类和跨式模式的影响,即语音和笔记录记录和跨式主权关系模式之间在拟议数据模型上的有效实验方式上的影响。