A new design of a fall detection system integrating landmark identification and deep learning techniques

Các tác giả

  • Tri Nhut Do*
  • Thi Thuy Le

Từ khóa:

Tóm tắt

This article introduces an innovative system that integrates landmark identification with deep learning to enhance fall detection accuracy and reliability. By utilising advanced computer vision techniques, such as MediaPipe for spatial recognition, the system effectively differentiates between routine movements and actual falls. The integration of landmarks with a deep learning prediction algorithm minimises false alarms, ensuring timely responses to genuine falls. Comprehensive experimentation underscores the system’s versatility across various scenarios, emphasising its potential to improve safety and independence for older adults. The training process demonstrates a steady increase in accuracy, stabilising by the 40th cycle, while error rates decline significantly during the initial cycles. Real-time experiments, involving both male and female participants aged 8 to 50, recorded a remarkable 95% detection rate of falls, showcasing the system’s effectiveness and promising future applications in elder care and smart health monitoring environments.

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Tiểu sử tác giả

  • Tri Nhut Do*

    University of Information Technology, Vietnam National University in Ho Chi Minh City, Quarter 34, Linh Xuan Ward, Ho Chi Minh City, Vietnam

  • Thi Thuy Le

    Thu Dau Mot University, 6 Tran Van On Street, Phu Loi Ward, Ho Chi Minh City, Vietnam

Đã Xuất bản

2026-03-14

Số

Chuyên mục

MATHEMATICS AND COMPUTER SCIENCE