NVIDIA Jetson Nano and Python-based Economical Human Fall Detection and Analysis System
Conference proceedings article
Authors/Editors
Strategic Research Themes
Publication Details
Author list: Chudanat Sudthongkhong, Siwat Suksri, Chanate Ratanaubol, Sookyuen Tepthong, Jira Jitsupa, Putawan Suksai
Publication year: 2023
Start page: 466
End page: 470
Number of pages: 5
Abstract
Abstract—Every year, around one-third of elderly individuals experience falls at home, especially in high-risk areas like bathrooms and stairs. Uneven floor surfaces exacerbate these dangers, impeding elderly mobility and significantly increasing fall risks, with recurrent falls being common. Recognizing this pressing concern, our project introduces a "Human Fall Detection and Estimation System" to mitigate harm. This system deploys a specialized camera with gesture recognition software to monitor for falls by detecting posture deviations. When a fall occurs, the system records the location and uses advanced Image Processing for precise Pose Estimation. Deep Learning analyzes Pose Estimation data to gauge fall severity and simultaneously alerts caregivers via the network for swift assistance. Incidents are logged in a database for root cause analysis, facilitating more effective elderly care systems. our system plays a crucial role in preventing and addressing elderly falls, swiftly detecting and assessing incidents, and a
Keywords
Caregiver alert system, Elderly falls, Fall detection system, Human posture analysis