论文标题

一种多模式的机器学习方法和工具包,以使英国手语用户中痴呆症早期的早期阶段自动化

A Multi-modal Machine Learning Approach and Toolkit to Automate Recognition of Early Stages of Dementia among British Sign Language Users

论文作者

Liang, Xing, Angelopoulou, Anastassia, Kapetanios, Epaminondas, Woll, Bencie, Al-batat, Reda, Woolfe, Tyron

论文摘要

老龄化的人口趋势与获得的认知障碍(例如痴呆症)的患病率增加相关。尽管无法治愈痴呆症,但及时的诊断有助于获得必要的支持和适当的药物。研究人员正在急切地致力于开发有效的技术工具,以帮助医生早日识别认知障碍。特别是,筛查英国手语老化聋人签名者(BSL)的痴呆症提出了额外的挑战,因为诊断过程与诸如口译员的质量和可用性以及适当的问卷和认知测试之类的条件绑定在一起。另一方面,基于深度学习的图像,视频分析和理解的方法是有希望的,尤其是采用卷积神经网络(CNN),这些方法需要大量的培训数据。 In this paper, however, we demonstrate novelty in the following way: a) a multi-modal machine learning based automatic recognition toolkit for early stages of dementia among BSL users in that features from several parts of the body contributing to the sign envelope, e.g., hand-arm movements and facial expressions, are combined, b) universality in that it is possible to apply our technique to users of any sign language, since it is language independent, c) given the trade-off在机器学习(ML)预测模型的复杂性和准确性以及可用的培训和测试数据有限之间,我们表明我们的方法不适合,并且有可能扩大规模。

The ageing population trend is correlated with an increased prevalence of acquired cognitive impairments such as dementia. Although there is no cure for dementia, a timely diagnosis helps in obtaining necessary support and appropriate medication. Researchers are working urgently to develop effective technological tools that can help doctors undertake early identification of cognitive disorder. In particular, screening for dementia in ageing Deaf signers of British Sign Language (BSL) poses additional challenges as the diagnostic process is bound up with conditions such as quality and availability of interpreters, as well as appropriate questionnaires and cognitive tests. On the other hand, deep learning based approaches for image and video analysis and understanding are promising, particularly the adoption of Convolutional Neural Network (CNN), which require large amounts of training data. In this paper, however, we demonstrate novelty in the following way: a) a multi-modal machine learning based automatic recognition toolkit for early stages of dementia among BSL users in that features from several parts of the body contributing to the sign envelope, e.g., hand-arm movements and facial expressions, are combined, b) universality in that it is possible to apply our technique to users of any sign language, since it is language independent, c) given the trade-off between complexity and accuracy of machine learning (ML) prediction models as well as the limited amount of training and testing data being available, we show that our approach is not over-fitted and has the potential to scale up.

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