Enhanced Fall Detection Using YOLOv7-W6-Pose for Real-Time Elderly Monitoring

This study aims to enhance elderly fall detection systems by using the YOLO (You Only Look Once) object detection algorithm with pose estimation, improving both accuracy and efficiency. Utilizing YOLOv7-W6-Pose’s robust real-time object detection and pose estimation capabilities, the proposed system...

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Main Authors: Eugenia Tîrziu, Ana-Mihaela Vasilevschi, Adriana Alexandru, Eleonora Tudora
Format: Article
Language:English
Published: MDPI AG 2024-12-01
Series:Future Internet
Subjects:
Online Access:https://www.mdpi.com/1999-5903/16/12/472
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author Eugenia Tîrziu
Ana-Mihaela Vasilevschi
Adriana Alexandru
Eleonora Tudora
author_facet Eugenia Tîrziu
Ana-Mihaela Vasilevschi
Adriana Alexandru
Eleonora Tudora
author_sort Eugenia Tîrziu
collection DOAJ
description This study aims to enhance elderly fall detection systems by using the YOLO (You Only Look Once) object detection algorithm with pose estimation, improving both accuracy and efficiency. Utilizing YOLOv7-W6-Pose’s robust real-time object detection and pose estimation capabilities, the proposed system can effectively identify falls in video feeds by using a webcam and process them in real-time on a high-performance computer equipped with a GPU to accelerate object detection and pose estimation algorithms. YOLO’s single-stage detection mechanism enables quick processing and analysis of video frames, while pose estimation refines this process by analyzing body positions and movements to accurately distinguish falls from other activities. Initial validation was conducted using several free videos sourced online, depicting various types of falls. To ensure real-time applicability, additional tests were conducted with videos recorded live using a webcam, simulating dynamic and unpredictable conditions. The experimental results demonstrate significant advancements in detection accuracy and robustness compared to traditional methods. Furthermore, the approach ensures data privacy by processing only skeletal points derived from pose estimation, with no personal data stored. This approach, integrated into the NeuroPredict platform developed by our team, advances fall detection technology, supporting better care and safety for older adults.
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id doaj-art-7b72448ef5b34a35bfc90a29f54d3ee3
institution Kabale University
issn 1999-5903
language English
publishDate 2024-12-01
publisher MDPI AG
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series Future Internet
spelling doaj-art-7b72448ef5b34a35bfc90a29f54d3ee32024-12-27T14:27:23ZengMDPI AGFuture Internet1999-59032024-12-01161247210.3390/fi16120472Enhanced Fall Detection Using YOLOv7-W6-Pose for Real-Time Elderly MonitoringEugenia Tîrziu0Ana-Mihaela Vasilevschi1Adriana Alexandru2Eleonora Tudora3National Institute for Research and Development in Informatics, 011455 Bucharest, RomaniaNational Institute for Research and Development in Informatics, 011455 Bucharest, RomaniaNational Institute for Research and Development in Informatics, 011455 Bucharest, RomaniaNational Institute for Research and Development in Informatics, 011455 Bucharest, RomaniaThis study aims to enhance elderly fall detection systems by using the YOLO (You Only Look Once) object detection algorithm with pose estimation, improving both accuracy and efficiency. Utilizing YOLOv7-W6-Pose’s robust real-time object detection and pose estimation capabilities, the proposed system can effectively identify falls in video feeds by using a webcam and process them in real-time on a high-performance computer equipped with a GPU to accelerate object detection and pose estimation algorithms. YOLO’s single-stage detection mechanism enables quick processing and analysis of video frames, while pose estimation refines this process by analyzing body positions and movements to accurately distinguish falls from other activities. Initial validation was conducted using several free videos sourced online, depicting various types of falls. To ensure real-time applicability, additional tests were conducted with videos recorded live using a webcam, simulating dynamic and unpredictable conditions. The experimental results demonstrate significant advancements in detection accuracy and robustness compared to traditional methods. Furthermore, the approach ensures data privacy by processing only skeletal points derived from pose estimation, with no personal data stored. This approach, integrated into the NeuroPredict platform developed by our team, advances fall detection technology, supporting better care and safety for older adults.https://www.mdpi.com/1999-5903/16/12/472vision-based fall detectionYOLOv7pose estimationelderlyreal-time alertprivacy-preserving
spellingShingle Eugenia Tîrziu
Ana-Mihaela Vasilevschi
Adriana Alexandru
Eleonora Tudora
Enhanced Fall Detection Using YOLOv7-W6-Pose for Real-Time Elderly Monitoring
Future Internet
vision-based fall detection
YOLOv7
pose estimation
elderly
real-time alert
privacy-preserving
title Enhanced Fall Detection Using YOLOv7-W6-Pose for Real-Time Elderly Monitoring
title_full Enhanced Fall Detection Using YOLOv7-W6-Pose for Real-Time Elderly Monitoring
title_fullStr Enhanced Fall Detection Using YOLOv7-W6-Pose for Real-Time Elderly Monitoring
title_full_unstemmed Enhanced Fall Detection Using YOLOv7-W6-Pose for Real-Time Elderly Monitoring
title_short Enhanced Fall Detection Using YOLOv7-W6-Pose for Real-Time Elderly Monitoring
title_sort enhanced fall detection using yolov7 w6 pose for real time elderly monitoring
topic vision-based fall detection
YOLOv7
pose estimation
elderly
real-time alert
privacy-preserving
url https://www.mdpi.com/1999-5903/16/12/472
work_keys_str_mv AT eugeniatirziu enhancedfalldetectionusingyolov7w6poseforrealtimeelderlymonitoring
AT anamihaelavasilevschi enhancedfalldetectionusingyolov7w6poseforrealtimeelderlymonitoring
AT adrianaalexandru enhancedfalldetectionusingyolov7w6poseforrealtimeelderlymonitoring
AT eleonoratudora enhancedfalldetectionusingyolov7w6poseforrealtimeelderlymonitoring