Bunthit WatanapaOrasa PatsaduPiyapat DajprathamChakarida NukoolkitRajamangala University of Technology systemFaculty of Medicine, Siriraj Hospital, Mahidol UniversityKing Mongkut s University of Technology Thonburi2019-08-232019-08-232018-01-01Applied Computational Intelligence and Soft Computing. Vol.2018, (2018)16879732168797242-s2.0-85049104233https://repository.li.mahidol.ac.th/handle/20.500.14594/45686© 2018 Bunthit Watanapa et al. This paper proposes a fall severity analytic and post-fall intelligence system with three interdependent modules. Module I is the analysis of fall severity based on factors extracted in the phases of during and after fall which include innovative measures of the sequence of body impact, level of impact, and duration of motionlessness. Module II is a timely autonomic notification to relevant persons with context-dependent fall severity alert via electronic communication channels (e.g., smartphone, tablet, or smart TV set). Lastly, Module III is the diagnostic support for caregivers and doctors to have information for making a well-informed decision of first aid or postcure with the chronologically traceable intelligence of information and knowledge found in Modules I and II. The system shall be beneficial to caregivers or doctors, in giving first aid/diagnosis/treatment to the subject, especially, in cases where the subject has lost consciousness and is unable to respond.Mahidol UniversityComputer ScienceEngineeringPost-Fall Intelligence Supporting Fall Severity Diagnosis Using Kinect SensorArticleSCOPUS10.1155/2018/5434897