@article { , title = {Fall prediction using behavioural modelling from sensor data in smart homes.}, abstract = {The number of methods for identifying potential fall risk is growing as the rate of elderly fallers continues to rise in the UK. Assessments for identifying risk of falling are usually performed in hospitals and other laboratory environments, however these are costly and cause inconvenience for the subject and health services. Replacing these intrusive testing methods with a passive in-home monitoring solution would provide a less time-consuming and cheaper alternative. As sensors become more readily available, machine learning models can be applied to the large amount of data they produce. This can support activity recognition, falls detection, prediction and risk determination. In this review, the growing complexity of sensor data, the required analysis, and the machine learning techniques used to determine risk of falling are explored. The current research on using passive monitoring in the home is discussed, while the viability of active monitoring using vision-based and wearable sensors is considered. Methods of fall detection, prediction and risk determination are then compared.}, doi = {10.1007/s10462-019-09687-7}, eissn = {1573-7462}, issn = {0269-2821}, issue = {2}, journal = {Artificial intelligence review}, note = {INFO COMPLETE (Now published, checked and updated 17/2/2020 LM-- Info via Springer Approval notification 1/2/2019 LM) PERMISSION GRANTED (version = VoR; embargo = none; licence = BY) DOCUMENT READY (VoR downloaded 17/2/2020 LM) ADDITIONAL INFO - Contact: Forbes, Glenn ; Massie, Stewart ; Craw, Susan -- Panel B}, pages = {1071-1091}, publicationstatus = {Published}, publisher = {Springer}, url = {http://hdl.handle.net/10059/3300}, volume = {53}, keyword = {Health & Wellbeing, Living in a Digital World, Prediction, Sensor data, Data analytics, Health}, year = {2020}, author = {Forbes, Glenn and Massie, Stewart and Craw, Susan} }