TY - JOUR ID - 86925 TI - Machine Learning Algorithms for Early Fall Detection of Elderly People JO - Journal of Information Technology Management JA - JITM LA - en SN - AU - Almeraikhi, Saleh AU - Al-Rajab, Murad AD - College of Engineering, Abu Dhabi University, Abu Dhabi, UAE. Y1 - 2022 PY - 2022 VL - 14 IS - 2 SP - 26 EP - 40 KW - elderly people KW - Machine learning KW - Fall Detection DO - 10.22059/jitm.2022.86925 N2 - Falls are a serious concern among the elderly people, causing severe physical pain to them and placing a strain on medical infrastructure. The global elderly population is expected to grow significantly in the coming years, as advances in healthcare allow lifespans to increase globally. This will bring more chances for falls to occur. With this in mind, there is a need for new research to be conducted on finding ways to reduce this problem. One area which shows promise is the use of Machine Learning to perform fall detection. Machine Learning is a rapidly growing field, and it has many applications in various fields such as finance, technology and medicine. When it comes to fall detection, Machine Learning systems are often able to detect falls much better and efficiently than a human can, given the same input data. The goal of this paper is to conduct a survey study on the main and most common machine learning algorithms implemented in the field of early fall detection for elderly people and the characteristics. The paper will discuss the different types of fall detection systems, algorithms, tools, datasets, applications, and challenges.  By conducting this research, a better understanding of the context, progress and trends in the field will be possible so that future research will have a guide to build upon. UR - https://jitm.ut.ac.ir/article_86925.html L1 - https://jitm.ut.ac.ir/article_86925_618db84f03cd26cb81e5d8efa3e495c8.pdf ER -