Host–parasite: Graph LSTM-in-LSTM for group activity recognition
This article aims to tackle the problem of group activity recognition in the multiple-person
scene. To model the group activity with multiple persons, most long short-term memory …
scene. To model the group activity with multiple persons, most long short-term memory …
Spatiotemporal co-attention recurrent neural networks for human-skeleton motion prediction
Human motion prediction aims to generate future motions based on the observed human
motions. Witnessing the success of Recurrent Neural Networks (RNN) in modeling …
motions. Witnessing the success of Recurrent Neural Networks (RNN) in modeling …
On geometric features for skeleton-based action recognition using multilayer lstm networks
RNN-based approaches have achieved outstanding performance on action recognition with
skeleton inputs. Currently these methods limit their inputs to coordinates of joints and …
skeleton inputs. Currently these methods limit their inputs to coordinates of joints and …
Coherence constrained graph LSTM for group activity recognition
This work aims to address the group activity recognition problem by exploring human motion
characteristics. Traditional methods hold that the motions of all persons contribute equally to …
characteristics. Traditional methods hold that the motions of all persons contribute equally to …
Automated online exam proctoring
Massive open online courses and other forms of remote education continue to increase in
popularity and reach. The ability to efficiently proctor remote online examinations is an …
popularity and reach. The ability to efficiently proctor remote online examinations is an …
Hierarchical long short-term concurrent memory for human interaction recognition
In this work, we aim to address the problem of human interaction recognition in videos by
exploring the long-term inter-related dynamics among multiple persons. Recently, Long …
exploring the long-term inter-related dynamics among multiple persons. Recently, Long …
A hierarchical representation for future action prediction
We consider inferring the future actions of people from a still image or a short video clip.
Predicting future actions before they are actually executed is a critical ingredient for enabling …
Predicting future actions before they are actually executed is a critical ingredient for enabling …
Role-aware interaction generation from textual description
This research tackles the problem of generating interaction between two human actors
corresponding to textual description. We claim that certain interactions, which we call …
corresponding to textual description. We claim that certain interactions, which we call …
Fusing geometric features for skeleton-based action recognition using multilayer LSTM networks
Recent skeleton-based action recognition approaches achieve great improvement by using
recurrent neural network (RNN) models. Currently, these approaches build an end-to-end …
recurrent neural network (RNN) models. Currently, these approaches build an end-to-end …
[PDF][PDF] A novel human interaction recognition via composite features and Max entropy classifier
S Kamal, A Jalal - Proceedings of the 2024 19th International …, 2024 - researchgate.net
Human Interaction Recognition (HIR) is a topic of extensive research, posing a challenge for
scholars to understand various human interactions and create reliable systems for their …
scholars to understand various human interactions and create reliable systems for their …