Abstract
Falls are a significant concern within the senior care system, often
leading to serious injuries and health complications. This article
introduces a novel approach for detecting falls using Motion History
Image (MHI) and a correlation factor to enhance the accuracy and
responsiveness of fall detection systems. The proposed method is
evaluated using key performance metrics, including sensitivity,
specificity, precision, and classification accuracy, providing a
comprehensive assessment of its effectiveness. The UR dataset is
employed to test the method, and results demonstrate that the approach
delivers superior sensitivity compared to contemporary techniques.
These findings suggest that the proposed method is a reliable solution
for improving fall detection within the senior care system.
Authors
S. VijayaKumar1, M. Nayas2, J. Sukanya3
Madurai Kamaraj University, India1, Mannar Thirumalai Naicker College, India2, M.V. Muthaih Government Arts College for Women, India3
Keywords
URFD, Pearson Correlation Coefficient, Motion History Image