论文标题

阿尔茨海默氏症的痴呆症检测通过与主动的机器人听众自发对话

Alzheimer's Dementia Detection through Spontaneous Dialogue with Proactive Robotic Listeners

论文作者

Li, Yuanchao, Lai, Catherine, Lala, Divesh, Inoue, Koji, Kawahara, Tatsuya

论文摘要

随着社会的衰老继续加速,阿尔茨海默氏病(AD)不仅受到医学的关注,而且在过去的十年中也受到了其他领域的关注。由于语音被认为是诊断认知能力下降的有效方法之一,因此,来自语音的AD检测已成为一个热门话题。然而,这种方法无法解决几个关键问题:1)AD是一种复杂的神经认知障碍,这意味着单独使用语音信息进行AD检测是不合适的,同时忽略了对话信息; 2)广告患者的话语包含许多影响语音识别却有助于诊断的反应; 3)AD患者的讲话往往少,导致对话分解,随着疾病的发展。这一事实导致了少量的话语,这可能会导致检测偏见。因此,在本文中,我们提出了一个新型的AD检测结构,该架构由两个主要模块组成:合奏广告检测器和一个主动的侦听器。该体系结构可以嵌入医疗保健的对话机器人对话系统中。

As the aging of society continues to accelerate, Alzheimer's Disease (AD) has received more and more attention from not only medical but also other fields, such as computer science, over the past decade. Since speech is considered one of the effective ways to diagnose cognitive decline, AD detection from speech has emerged as a hot topic. Nevertheless, such approaches fail to tackle several key issues: 1) AD is a complex neurocognitive disorder which means it is inappropriate to conduct AD detection using utterance information alone while ignoring dialogue information; 2) Utterances of AD patients contain many disfluencies that affect speech recognition yet are helpful to diagnosis; 3) AD patients tend to speak less, causing dialogue breakdown as the disease progresses. This fact leads to a small number of utterances, which may cause detection bias. Therefore, in this paper, we propose a novel AD detection architecture consisting of two major modules: an ensemble AD detector and a proactive listener. This architecture can be embedded in the dialogue system of conversational robots for healthcare.

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