학술논문

SDFA: Structure-Aware Discriminative Feature Aggregation for Efficient Human Fall Detection in Video
Document Type
Periodical
Source
IEEE Transactions on Industrial Informatics IEEE Trans. Ind. Inf. Industrial Informatics, IEEE Transactions on. 19(8):8713-8721 Aug, 2023
Subject
Power, Energy and Industry Applications
Signal Processing and Analysis
Computing and Processing
Communication, Networking and Broadcast Technologies
Skeleton
Feature extraction
Joints
Fall detection
Privacy
Monitoring
Informatics
Graph convolutional network
human joints
joint adjacency
spatiotemporal modeling
2-D human skeleton
Language
ISSN
1551-3203
1941-0050
Abstract
Older people are susceptible to fall due to instability in posture and deteriorating health. Immediate access to medical support can greatly reduce repercussions. Hence, there is an increasing interest in automated fall detection, often incorporated into a smart health-care system to provide better monitoring. Existing systems focus on wearable devices that are inconvenient or video monitoring that has privacy concerns. Moreover, these systems provide a limited perspective of their generalization ability as they are tested on datasets containing few activities that have wide disparity in the action space and are easy to differentiate. Complex daily life scenarios pose much greater challenges with activities that overlap in action spaces due to similar posture or motion. To overcome these limitations, we propose a fall detection model, called structure-aware discriminative feature aggregation, based on human skeletons extracted from low-resolution videos. The use of skeleton data ensures privacy and low-resolution videos ensures low hardware and computational cost. Our model captures discriminative structural displacements and motion trends using unified joint and motion features projected onto a shared high-dimensional space. Particularly, the use of separable convolution combined with a powerful graph convolutional network architecture provides improved performance. Extensive experiments on five large-scale datasets with a wide range of evaluation settings show that our model achieves competitive performance with extremely low computational complexity and runs faster than existing models.