AI-Driven Privacy in Elderly Care: Developing a Comprehensive Solution for Camera-Based Monitoring of Older Adults

Author:

Wang Chang-Yueh1,Lin Fang-Suey1

Affiliation:

1. Graduate School of Design, National Yunlin University of Science and Technology, Yunlin 64002, Taiwan

Abstract

The need for privacy in elderly care is crucial, especially where constant monitoring can intrude on personal dignity. This research introduces the development of a unique camera-based monitoring system designed to address the dual objectives of elderly care: privacy and safety. At its core, the system employs an AI-driven technique for real-time subject anonymization. Unlike traditional methods such as pixelization or blurring, our proposed approach effectively removes the subject under monitoring from the scene, replacing them with a two-dimensional avatar. This is achieved through the use of YOLOv8, which facilitates accurate real-time person detection and pose estimation. Furthermore, the proposed system incorporates a fall detection algorithm that utilizes a residual causal convolutional network together with motion features of persons to identify emergency situations and promptly notify caregivers in the event of a fall. The effectiveness of the system is evaluated to emphasize its advanced privacy protection technique and fall detection capabilities using several metrics. This evaluation demonstrates the system’s proficiency in real-world applications and its potential to enhance both safety and privacy in elderly care environments.

Publisher

MDPI AG

Reference81 articles.

1. Population Division of the Department of Economic and Social Affairs (2022). World Population Prospects 2022, United Nations.

2. World Health Organization (2007). WHO Global Report on Falls Prevention in Older Age, World Health Organization.

3. Assessment of a Wearable Fall Prevention System at a Veterans Health Administration Hospital;Osborne;Digit. Health,2023

4. Research of Fall Detection and Fall Prevention Technologies: A Systematic Review;Ren;IEEE Access,2019

5. Fall Prevention Intervention Technologies: A Conceptual Framework and Survey of the State of the Art;Hamm;J. Biomed. Inform.,2016

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