Publication | Open Access
Human Fall Detection Using Machine Learning Methods: A Survey
39
Citations
61
References
2019
Year
EngineeringMachine LearningAction Recognition (Movement Science)Machine Learning AlgorithmsBiometricsWearable TechnologyAction Recognition (Computer Vision)Human FallHuman MonitoringHealth Monitoring (Structural Health Monitoring)Health Monitoring (Biomedical Engineering)Image AnalysisKinesiologyData SciencePattern RecognitionHuman MotionHealth SciencesFall PreventionMachine VisionAssistive TechnologyAlarm SystemComputer VisionVideo AnalysisHealth MonitoringHuman MovementActivity Recognition
Human fall due to an accident can cause heavy injuries which may lead to a major medical issue for elderly people. With the introduction of new advanced technologies in the healthcare sector, an alarm system can be developed to detect a human fall. This paper summarizes various human fall detection methods and techniques, through observing people’s daily routine activities. A human fall detection system can be designed using one of these technologies: wearable based device, context-aware based and vision based methods. In this paper, we discuss different machine learning models designed to detect human fall using these techniques. These models have already been designed to discriminate fall from activities of daily living (ADL) like walking, moving, sitting, standing, lying and bending. This paper is aimed at analyzing the effectiveness of these machine learning algorithms for the detection of human fall.
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