School of Sea, Science and Technology, University of the Itajaí Valley, Itajaí 88302-901, Brazil.
Federal Institute of Education, Science and Technology Sul-Rio-Grandense, Passo Fundo 99064-440, Brazil.
Sensors (Basel). 2022 Nov 5;22(21):8531. doi: 10.3390/s22218531.
According to the World Health Organization, about 15% of the world's population has some form of disability. Assistive Technology, in this context, contributes directly to the overcoming of difficulties encountered by people with disabilities in their daily lives, allowing them to receive education and become part of the labor market and society in a worthy manner. Assistive Technology has made great advances in its integration with Artificial Intelligence of Things (AIoT) devices. AIoT processes and analyzes the large amount of data generated by Internet of Things (IoT) devices and applies Artificial Intelligence models, specifically, machine learning, to discover patterns for generating insights and assisting in decision making. Based on a systematic literature review, this article aims to identify the machine-learning models used across different research on Artificial Intelligence of Things applied to Assistive Technology. The survey of the topics approached in this article also highlights the context of such research, their application, the IoT devices used, and gaps and opportunities for further development. The survey results show that 50% of the analyzed research address visual impairment, and, for this reason, most of the topics cover issues related to computational vision. Portable devices, wearables, and smartphones constitute the majority of IoT devices. Deep neural networks represent 81% of the machine-learning models applied in the reviewed research.
根据世界卫生组织的数据,全球约有 15%的人口存在某种形式的残疾。在这种情况下,辅助技术直接有助于克服残疾人在日常生活中遇到的困难,使他们能够以有尊严的方式接受教育并成为劳动力市场和社会的一部分。辅助技术在与人工智能物联网 (AIoT) 设备的集成方面取得了重大进展。AIoT 处理和分析物联网 (IoT) 设备生成的大量数据,并应用人工智能模型,特别是机器学习,以发现模式,生成见解并协助决策。基于系统的文献回顾,本文旨在确定跨不同人工智能物联网应用于辅助技术的研究中使用的机器学习模型。本文所探讨主题的调查还突出了此类研究的背景、应用、使用的物联网设备以及进一步发展的差距和机会。调查结果显示,分析研究的 50% 涉及视力障碍,因此,大多数主题涵盖与计算视觉相关的问题。便携式设备、可穿戴设备和智能手机构成了物联网设备的大部分。深度神经网络代表了所审查研究中应用的机器学习模型的 81%。