Pregled bibliografske jedinice broj: 1106214
Human activity recognition with smartphones and its economic implications
Human activity recognition with smartphones and its economic implications // Bobcatsss 2019 Information and technology transforming lives: connection, interaction, innovation / Gašo, Gordana ; Gilman Ranogajec, Mirna ; Žilić, Jure ; Lundman, Madeleine (ur.).
Osijek, 2019. str. 87-97 (predavanje, recenziran, cjeloviti rad (in extenso), znanstveni)
CROSBI ID: 1106214 Za ispravke kontaktirajte CROSBI podršku putem web obrasca
Naslov
Human activity recognition with smartphones and its
economic implications
Autori
Đurašinović, Anita ; Zekić-Sušac, Marijana ; Has, Adela
Vrsta, podvrsta i kategorija rada
Radovi u zbornicima skupova, cjeloviti rad (in extenso), znanstveni
Izvornik
Bobcatsss 2019 Information and technology transforming lives: connection, interaction, innovation
/ Gašo, Gordana ; Gilman Ranogajec, Mirna ; Žilić, Jure ; Lundman, Madeleine - Osijek, 2019, 87-97
ISBN
978-953-314-121-3
Skup
27th Bobcatsss Symposium Information and technology transforming lives: connection, interaction, innovation (Bobcatsss 2019)
Mjesto i datum
Osijek, Hrvatska, 22.01.2019. - 24.01.2019
Vrsta sudjelovanja
Predavanje
Vrsta recenzije
Recenziran
Ključne riječi
decision trees, human activity recognition with smartphones, human activity recognition technologies, neural networks, sensors in smartphones
Sažetak
This paper suggests models for human activity recognition with the use of artificial neural networks and decision trees. Today, smartphones are very popular which makes the use of smartphone sensors most suitable and cost-effective tools for measuring human activities. Human recognition technology can be used in healthcare (recording data about elderly people and preventing their falls etc.), in recording people’s everyday activities, location etc. The purpose of this paper is to model human activity recognition through several goals: (1) to describe technology, types and approaches of human activity recognition, the challenges of its applications, and (2) to create a machine-learning model that will be able to recognize human activity by using artificial neural networks and decision trees. The dataset on human activity recognition from the website Kaggle.com was used, which consisted of more than five hundred input variables and the output variable expressed in six categories: laying, sitting, standing, walking, walking downstairs and walking upstairs. Both neural network and decision tree methods were trained on the same training subset and their accuracy on the same test subset was measured and compared. Besides testing model accuracy, the importance of input variables was also analyzed. The results showed that the most accurate model was obtained by neural networks with 74.45% of accurately recognized human activities, whereas the decision tree model accuracy was 67.88%. Possible applications of human recognition technology are numerous, like personal biometric signature, care of elderly people and infants, localization, industrial production etc. There are certain limitations of using this type of technology like user sensitivity (due to different ways of doing the same movements), location sensitivity, the complexity of the activity (if users do many activities at the same time), energy limitations, source limitations, an insufficient number of subjects for training.
Izvorni jezik
Engleski
POVEZANOST RADA
Ustanove:
Ekonomski fakultet, Osijek