An efficient vision based elderly care monitoring framework using fall detection

2019 ◽  
Vol 22 (4) ◽  
pp. 603-611
Author(s):  
Rishabh Malik ◽  
Kalash Rastogi ◽  
Vikas Tripathi ◽  
Tapas Badal
Author(s):  
Raafat Aburukba ◽  
Assim Sagahyroon ◽  
Loay Taha Kamel ◽  
Abdulla Mohammed Al-Shamsi ◽  
Hussain Surti ◽  
...  

Sensors ◽  
2019 ◽  
Vol 19 (20) ◽  
pp. 4565 ◽  
Author(s):  
Fabián Riquelme ◽  
Cristina Espinoza ◽  
Tomás Rodenas ◽  
Jean-Gabriel Minonzio ◽  
Carla Taramasco

Automatic fall detection is a very active research area, which has grown explosively since the 2010s, especially focused on elderly care. Rapid detection of falls favors early awareness from the injured person, reducing a series of negative consequences in the health of the elderly. Currently, there are several fall detection systems (FDSs), mostly based on predictive and machine-learning approaches. These algorithms are based on different data sources, such as wearable devices, ambient-based sensors, or vision/camera-based approaches. While wearable devices like inertial measurement units (IMUs) and smartphones entail a dependence on their use, most image-based devices like Kinect sensors generate video recordings, which may affect the privacy of the user. Regardless of the device used, most of these FDSs have been tested only in controlled laboratory environments, and there are still no mass commercial FDS. The latter is partly due to the impossibility of counting, for ethical reasons, with datasets generated by falls of real older adults. All public datasets generated in laboratory are performed by young people, without considering the differences in acceleration and falling features of older adults. Given the above, this article presents the eHomeSeniors dataset, a new public dataset which is innovative in at least three aspects: first, it collects data from two different privacy-friendly infrared thermal sensors; second, it is constructed by two types of volunteers: normal young people (as usual) and performing artists, with the latter group assisted by a physiotherapist to emulate the real fall conditions of older adults; and third, the types of falls selected are the result of a thorough literature review.


Author(s):  
Yixiao Yun ◽  
Christopher Innocenti ◽  
Gustav Nero ◽  
Henrik Linden ◽  
Irene Yu-Hua Gu
Keyword(s):  

2020 ◽  
Vol 1 ◽  
Author(s):  
Daniele Berardini ◽  
Sara Moccia ◽  
Lucia Migliorelli ◽  
Iacopo Pacifici ◽  
Paolo di Massimo ◽  
...  

AbstractElderly care is becoming a relevant issue with the increase of population ageing. Fall injuries, with their impact on social and healthcare cost, represent one of the biggest concerns over the years. Researchers are focusing their attention on several fall-detection algorithms. In this paper, we present a deep-learning solution for automatic fall detection from RGB videos. The proposed approach achieved a mean recall of 0.916, prompting the possibility of translating this approach in the actual monitoring practice. Moreover to enable the scientific community making research on the topic the dataset used for our experiments will be released. This could enhance elderly people safety and quality of life, attenuating risks during elderly activities of daily living with reduced healthcare costs as a final result.


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