Human Fall Detection using Transfer Learning-based 3D CNN
By: Ekram Alam , Abu Sufian , Paramartha Dutta and more
Potential Business Impact:
Helps computers spot when old people fall.
Unintentional or accidental falls are one of the significant health issues in senior persons. The population of senior persons is increasing steadily. So, there is a need for an automated fall detection monitoring system. This paper introduces a vision-based fall detection system using a pre-trained 3D CNN. Unlike 2D CNN, 3D CNN extracts not only spatial but also temporal features. The proposed model leverages the original learned weights of a 3D CNN model pre-trained on the Sports1M dataset to extract the spatio-temporal features. Only the SVM classifier was trained, which saves the time required to train the 3D CNN. Stratified shuffle five split cross-validation has been used to split the dataset into training and testing data. Extracted features from the proposed 3D CNN model were fed to an SVM classifier to classify the activity as fall or ADL. Two datasets, GMDCSA and CAUCAFall, were utilized to conduct the experiment. The source code for this work can be accessed via the following link: https://github.com/ekramalam/HFD_3DCNN.
Similar Papers
A Machine Learning Approach to Automatic Fall Detection of Soldiers
Machine Learning (CS)
Helps detect soldier injuries to speed up rescue.
SDFA: Structure Aware Discriminative Feature Aggregation for Efficient Human Fall Detection in Video
CV and Pattern Recognition
Detects falls using skeleton data from videos.
Anticipatory Fall Detection in Humans with Hybrid Directed Graph Neural Networks and Long Short-Term Memory
CV and Pattern Recognition
Predicts falls before they happen.