Towards a novel machine learning approach to support augmentative and alternative communication (AAC)

被引:0
作者
Wei Li
Xiaoli Qiu
Yang Li
Jing Ji
Xinxin Liu
Shuanzhu Li
机构
[1] Information Technology and Cultural Management Institute,
[2] Hebei Institute of Communications,undefined
来源
International Journal of Speech Technology | 2022年 / 25卷
关键词
Augmentative and Alternative Communication; Autism; Voice model; Network; Brain interface; Artificial intelligence;
D O I
暂无
中图分类号
学科分类号
摘要
The conversational abilities of people with specific communications requirements are termed as Augmentative and Alternative Communication. It is a hierarchical organizational construction focused on communications usability; appropriateness of communications; and actualization of information, judgment, and capabilities. In particular, Lighter concluded that entities needing AAC to improve and combine their expertise, determination, and abilities in four interrelated areas illustrate communication abilities: verbal, organizational, interpersonal, and political. Knowledge of data extended this concept to claim that communication ability has been affected by various psychological influences and environmental challenges that promote grammar, organizational, interpersonal, tactical skills, and knowledge. With Machine Learning Augmentative and Alternative Communication, an artificial intelligence, voice model communications board aimed to decrease these issues’ influence to mitigate some real problems often faced by AAC users. MLAAC provides customization above and above the traditional object platform and enhances artificial intelligence for smart recommendations. It promotes broader connectivity, with a low cost or local network, easy access to various personal computers. MLAAC is developed for autism and individuals with the trauma that impairs people’s capacity, for example, heart attack autonomic dysfunction, to interact efficiently. Two experiments demonstrated the machine’s significant benefits to MLAAC both restricted and not-restricted users in terms of performance and responsiveness.
引用
收藏
页码:331 / 341
页数:10
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共 125 条
[1]  
Jiang R(2020)Object tracking on event cameras with offline–online learning CAAI Transactions on Intelligence Technology 5 165-171
[2]  
Mou X(2018)A pilot community-based randomized comparison of speech-generating devices and the picture exchange communication system for children diagnosed with an autism spectrum disorder Autism Research 11 1701-1711
[3]  
Shi S(2020)MULTIMOORA strategy for solving multi-attribute group decision making (MAGDM) in trapezoidal neutrosophic number environment CAAI Transactions on Intelligence Technology 5 150-156
[4]  
Zhou Y(2018)A systematic review of facilitated communication 2014–2018 finds no new evidence that messages delivered using facilitated communication are authored by the person with a disability Autism & Developmental Language Impairments 3 2396941518821570-19
[5]  
Wang Q(2018)Social media use continues to rise in developing countries but plateaus across developed ones Pew Research Center 22 2-2471
[6]  
Dong M(2016)An online marking system conducive to learning Journal of Intelligent & Fuzzy Systems 31 2463-858
[7]  
Chen S(2015)Energy-efficient multimedia data dissemination in vehicular clouds: Stochastic-reward-nets-based coalition game approach IEEE Systems Journal 10 847-297
[8]  
Gilroy SP(2018)Deep learning based on Batch Normalization for P300 signal detection Neurocomputing 275 288-142
[9]  
Leader G(2014)A Mechanism of abstraction for independent definition of game’s platform elements Visión Electrónica 8 134-1175
[10]  
McCleery JP(2018)A brain-computer interface based on miniature-event-related potentials induced by very small lateral visual stimuli IEEE Transactions on Biomedical Engineering 65 1166-636