A major emerging challenge is how to protect people\u27s privacy as cameras and computer vision are increasingly integrated into our daily lives, including in smart devices inside homes. A potential solution is to capture and record just the minimum amount of information needed to perform a task of interest. In this paper, we propose a fully-coupled two-stream spatiotemporal architecture for reliable human action recognition on extremely low resolution (e.g., 1216 pixel) videos. We provide an efficient method to extract spatial and temporal features and to aggregate them into a robust feature representation for an entire action video sequence. We also consider how to incorporate high resolution videos during training in order to build bette...
<p>Recognizing human actions in videos is a challenging problem owning to complex motion appearance,...
This paper introduces a fusion convolutional architecture for efficient learning of spatio-temporal ...
This paper introduces a fusion convolutional architecture for efficient learning of spatio-temporal ...
This paper presents an approach for recognizing human activities from extreme low resolution (e.g., ...
This paper presents an approach for recognizing human activities from extreme low resolution (e.g., ...
This paper presents an approach for recognizing human activities from extreme low resolution (e.g., ...
Deep convolutional neural networks (ConvNets) have been recently shown to attain state-of-the-art pe...
Human action recognition is still a challenging problem and researchers are focusing to investigate ...
Human action recognition is still a challenging problem and researchers are focusing to investigate ...
ABSTRACT : Human action recognition is still a challenging problem and researchers are focusing to ...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
Human action recognition is one of the most pressing questions in societal emergencies of any kind. ...
It is a great challenge to perform high level recognition tasks on videos that are poor in quality. ...
Action recognition requires the accurate analysis of action elements in the form of a video clip and...
UnrestrictedRecognizing actions from video and other sensory data is important for a number of appli...
<p>Recognizing human actions in videos is a challenging problem owning to complex motion appearance,...
This paper introduces a fusion convolutional architecture for efficient learning of spatio-temporal ...
This paper introduces a fusion convolutional architecture for efficient learning of spatio-temporal ...
This paper presents an approach for recognizing human activities from extreme low resolution (e.g., ...
This paper presents an approach for recognizing human activities from extreme low resolution (e.g., ...
This paper presents an approach for recognizing human activities from extreme low resolution (e.g., ...
Deep convolutional neural networks (ConvNets) have been recently shown to attain state-of-the-art pe...
Human action recognition is still a challenging problem and researchers are focusing to investigate ...
Human action recognition is still a challenging problem and researchers are focusing to investigate ...
ABSTRACT : Human action recognition is still a challenging problem and researchers are focusing to ...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
Human action recognition is one of the most pressing questions in societal emergencies of any kind. ...
It is a great challenge to perform high level recognition tasks on videos that are poor in quality. ...
Action recognition requires the accurate analysis of action elements in the form of a video clip and...
UnrestrictedRecognizing actions from video and other sensory data is important for a number of appli...
<p>Recognizing human actions in videos is a challenging problem owning to complex motion appearance,...
This paper introduces a fusion convolutional architecture for efficient learning of spatio-temporal ...
This paper introduces a fusion convolutional architecture for efficient learning of spatio-temporal ...