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Title: | Fever status detection using artificial neuron network |
Author: | Nchena, Linos Mabvuto; Janáčová, Dagmar |
Document type: | Conference paper (English) |
Source document: | Proceedings of the 23rd International Conference on Enterprise Information Systems (ICEIS 2021), Vol 1. 2021, vol. 1, p. 776-781 |
ISSN: | 2184-4992 (Sherpa/RoMEO, JCR) |
ISBN: | 978-989-758-509-8 |
DOI: | https://doi.org/10.5220/0010485407760781 |
Abstract: | This research paper proposes a monitoring system and a prototype that has been developed for detecting if a when fever is present in senior citizens or any other specific groups of people requiring continuous care. With various issues affecting the health of senior citizens, it is imperative to continuously monitor their health status. The monitoring system is beneficial as it will make it feasible to enable the real time detection of fever and thus allowing for the early treatment. Delaying treatment can lead to the underlining health issue going beyond the remediable condition. Thus, quick detection is vital. There are various issues that might causes illness in people. Some of the issues include virus outbreak, seasonal infections, disease, and old age. In this paper our focus is mainly on old age. This group of people is much more at risk of getting ill or frequently need more attention. In this project, the presence of fever or illness has been detected by using artificial intelligence (AI). The AI technique that is utilized in this project is artificial neural networks. The computation is done by first training the system and then secondly validating the trained system. After the training, the system is supplied with a new set of data, with a known state, to validate that the training was successful. To validate the system, it is provided with sample data to test its efficiency. If the system is well trained the validation data would label that data correctly. That label is known before the validation test, as the sample data had known labels. These known labels were not given to training but not validation system. The system is function properly if its label matched the sample data label. The conducted experiment demonstrated a successful detection with an efficiency rate of 82 percent. |
Full text: | https://www.scitepress.org/Link.aspx?doi=10.5220/0010485407760781 |
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