Emotions and Activity Recognition System Using Wearable Device Sensors

Nowadays machines have become extremely smart, there are a lot of existing services that seemed to be unexpectable and futuristic decades or even a few years ago. However, artificial intelligence is still far from human intelligence, machines do not have feelings, consciousness, and intuition. How c...

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Main Author: Mikhail Rumiantcev
Format: Article
Language:English
Published: FRUCT 2021-01-01
Series:Proceedings of the XXth Conference of Open Innovations Association FRUCT
Subjects:
Online Access:https://www.fruct.org/publications/fruct28/files/Rum.pdf
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author Mikhail Rumiantcev
author_facet Mikhail Rumiantcev
author_sort Mikhail Rumiantcev
collection DOAJ
description Nowadays machines have become extremely smart, there are a lot of existing services that seemed to be unexpectable and futuristic decades or even a few years ago. However, artificial intelligence is still far from human intelligence, machines do not have feelings, consciousness, and intuition. How can we help machines to learn about human feelings and understand their needs better? People take their devices wherever they go, what can devices tell us about their owners? Personal preferences and needs are dependent on emotional and situational contexts. Therefore, emotional and activity aware gadgets would be more intuitive and provide more appropriate information to users. Contemporary wearable devices involve wide-ranging sensors. In this paper, I am going to present emotion and activity recognition approaches. The experimental recognition system elaborated during this research, enriched with sensor data collection and machine learning algorithms. It is targeted to guess how users are doing and what they are feeling. Such recognition systems can find applications in different areas such as music recommendations, personal safety, or healthcare domains.
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spelling doaj.art-1a903a0372324f7dac69afe7b6dd935d2022-12-21T19:42:29ZengFRUCTProceedings of the XXth Conference of Open Innovations Association FRUCT2305-72542343-07372021-01-0128138138910.23919/FRUCT50888.2021.9347652Emotions and Activity Recognition System Using Wearable Device SensorsMikhail Rumiantcev0University of Jyvaskyla, FinlandNowadays machines have become extremely smart, there are a lot of existing services that seemed to be unexpectable and futuristic decades or even a few years ago. However, artificial intelligence is still far from human intelligence, machines do not have feelings, consciousness, and intuition. How can we help machines to learn about human feelings and understand their needs better? People take their devices wherever they go, what can devices tell us about their owners? Personal preferences and needs are dependent on emotional and situational contexts. Therefore, emotional and activity aware gadgets would be more intuitive and provide more appropriate information to users. Contemporary wearable devices involve wide-ranging sensors. In this paper, I am going to present emotion and activity recognition approaches. The experimental recognition system elaborated during this research, enriched with sensor data collection and machine learning algorithms. It is targeted to guess how users are doing and what they are feeling. Such recognition systems can find applications in different areas such as music recommendations, personal safety, or healthcare domains.https://www.fruct.org/publications/fruct28/files/Rum.pdfmachine learningemotions recognitionactivity recognitionwearable device sensors
spellingShingle Mikhail Rumiantcev
Emotions and Activity Recognition System Using Wearable Device Sensors
Proceedings of the XXth Conference of Open Innovations Association FRUCT
machine learning
emotions recognition
activity recognition
wearable device sensors
title Emotions and Activity Recognition System Using Wearable Device Sensors
title_full Emotions and Activity Recognition System Using Wearable Device Sensors
title_fullStr Emotions and Activity Recognition System Using Wearable Device Sensors
title_full_unstemmed Emotions and Activity Recognition System Using Wearable Device Sensors
title_short Emotions and Activity Recognition System Using Wearable Device Sensors
title_sort emotions and activity recognition system using wearable device sensors
topic machine learning
emotions recognition
activity recognition
wearable device sensors
url https://www.fruct.org/publications/fruct28/files/Rum.pdf
work_keys_str_mv AT mikhailrumiantcev emotionsandactivityrecognitionsystemusingwearabledevicesensors