In this paper we present a human action recognition system that utilizes the fusion of depth and inertial sensor measurements. Robust depth and inertial signal features, that are subject-invariant, are used to train independent Neural Networks, and later decision level fusion is employed using a probabilistic framework in the form of Logarithmic Opinion Pool. The system is evaluated using UTD-Multimodal Human Action Dataset, and we achieve 95% accuracy in 8-fold cross-validation, which is not only higher than using each sensor separately, but is also better than the best accuracy obtained on the mentioned dataset by 3.5%
The European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Da...
The automated recognition of human activity is an important computer vision task, and it has been th...
Automated human action recognition is one of the most attractive and practical research fields in co...
In this paper we present a human action recognition system that utilizes the fusion of depth and ine...
In this paper, we present a method (Action-Fusion) for human action recognition from depth maps and ...
Reliable human machine interfaces is key to accomplishing the goals of Industry 4.0. This work propo...
Wearable inertial sensors are currently receiving pronounced interest due to applications in unconst...
Automatic human action recognition is a research topic that has attracted significant attention late...
In this paper, we present a method (Action-Fusion) for human action recognition from depth maps and ...
Our focus in this research is on the use of deep learning approaches for human activity recognition ...
In recent years, human action recognition systems have been increasingly developed to support a wide...
The growing development in the sensory implementation has facilitated that the human activity can be...
Human Action Recognition is one of the important research areas in computer vision and image process...
Human action recognition, also known as HAR, is at the foundation of many different applications rel...
The object of this research work is to address some of the issues affecting vision based human acti...
The European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Da...
The automated recognition of human activity is an important computer vision task, and it has been th...
Automated human action recognition is one of the most attractive and practical research fields in co...
In this paper we present a human action recognition system that utilizes the fusion of depth and ine...
In this paper, we present a method (Action-Fusion) for human action recognition from depth maps and ...
Reliable human machine interfaces is key to accomplishing the goals of Industry 4.0. This work propo...
Wearable inertial sensors are currently receiving pronounced interest due to applications in unconst...
Automatic human action recognition is a research topic that has attracted significant attention late...
In this paper, we present a method (Action-Fusion) for human action recognition from depth maps and ...
Our focus in this research is on the use of deep learning approaches for human activity recognition ...
In recent years, human action recognition systems have been increasingly developed to support a wide...
The growing development in the sensory implementation has facilitated that the human activity can be...
Human Action Recognition is one of the important research areas in computer vision and image process...
Human action recognition, also known as HAR, is at the foundation of many different applications rel...
The object of this research work is to address some of the issues affecting vision based human acti...
The European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Da...
The automated recognition of human activity is an important computer vision task, and it has been th...
Automated human action recognition is one of the most attractive and practical research fields in co...