Abdulghafor Rawad, Abdelmohsen Abdelrahman, Turaev Sherzod, Ali Mohammed A H, Wani Sharyar
Department of Computer Science, Faculty of Information and Communication Technology, International Islamic University Malaysia, Kuala Lumpur 53100, Malaysia.
Department of Computer Science and Software Engineering, College of Information Technology, United Arab Emirates University, Al Ain 15551, United Arab Emirates.
Healthcare (Basel). 2022 Dec 10;10(12):2504. doi: 10.3390/healthcare10122504.
In recent decades, epidemic and pandemic illnesses have grown prevalent and are a regular source of concern throughout the world. The extent to which the globe has been affected by the COVID-19 epidemic is well documented. Smart technology is now widely used in medical applications, with the automated detection of status and feelings becoming a significant study area. As a result, a variety of studies have begun to focus on the automated detection of symptoms in individuals infected with a pandemic or epidemic disease by studying their body language. The recognition and interpretation of arm and leg motions, facial recognition, and body postures is still a developing field, and there is a dearth of comprehensive studies that might aid in illness diagnosis utilizing artificial intelligence techniques and technologies. This literature review is a meta review of past papers that utilized AI for body language classification through full-body tracking or facial expressions detection for various tasks such as fall detection and COVID-19 detection, it looks at different methods proposed by each paper, their significance and their results.
近几十年来,流行病和大流行病日益普遍,成为全球持续关注的一个问题。新冠疫情对全球的影响程度已有充分记录。智能技术目前在医疗应用中广泛使用,自动检测状态和情绪成为一个重要的研究领域。因此,各种研究开始通过研究感染大流行或流行病的个体的肢体语言,专注于自动检测其症状。手臂和腿部动作的识别与解读、面部识别和身体姿势仍然是一个不断发展的领域,缺乏可能有助于利用人工智能技术进行疾病诊断的全面研究。这篇文献综述是对过去论文的元综述,这些论文通过全身跟踪或面部表情检测,利用人工智能进行肢体语言分类,以完成诸如跌倒检测和新冠检测等各种任务,它审视了每篇论文提出的不同方法、其重要性及其结果。