In this paper, we proposed a deep convolutional network architecture for recognizing human actions in videos using action bank features. Action bank features computed against of a predefined set of videos known as an action bank, contain linear patterns representing the similarity of the video against the action bank videos. Due to the independence of the patterns across action bank features, a convolutional neural network with linear masks is considered to capture the local patterns associated with each action. The knowledge gained through training is used to assign an action label to videos during testing. Experiments conducted on UCF50 dataset demonstrates the effectiveness of the proposed approach in capturing and recognizing these line...
We investigate architectures of discriminatively trained deep Convolutional Networks (ConvNets) for ...
We introduce a simple yet effective network that embeds a novel Discriminative Feature Pooling (DFP)...
Convolutional neural network(CNN) models have been extensively used in recent years to solve the pro...
With the advancement in technology and availability of multimedia content, human action recognition ...
Human action recognition is one of the important topics in video understanding. It is widely used in...
Human action recognition has become an important research area in the fields of computer vision, ima...
In this paper, we propose a hybrid deep neural network model for recognizing human actions in videos...
Human action recognition techniques have gained significant attention among next-generation technolo...
Human action recognition is an important application domain in computer vision. Its primary aim is t...
Human action recognition is the process of labeling a video according to human behavior. This proces...
Human action recognition is still a challenging problem and researchers are focusing to investigate ...
While convolutional neural networks (CNNs) have taken the lead for many learning tasks, action recog...
Human action recognition is still a challenging problem and researchers are focusing to investigate ...
Human action recognition is attempting to identify what kind of action is being performed in a given...
ABSTRACT : Human action recognition is still a challenging problem and researchers are focusing to ...
We investigate architectures of discriminatively trained deep Convolutional Networks (ConvNets) for ...
We introduce a simple yet effective network that embeds a novel Discriminative Feature Pooling (DFP)...
Convolutional neural network(CNN) models have been extensively used in recent years to solve the pro...
With the advancement in technology and availability of multimedia content, human action recognition ...
Human action recognition is one of the important topics in video understanding. It is widely used in...
Human action recognition has become an important research area in the fields of computer vision, ima...
In this paper, we propose a hybrid deep neural network model for recognizing human actions in videos...
Human action recognition techniques have gained significant attention among next-generation technolo...
Human action recognition is an important application domain in computer vision. Its primary aim is t...
Human action recognition is the process of labeling a video according to human behavior. This proces...
Human action recognition is still a challenging problem and researchers are focusing to investigate ...
While convolutional neural networks (CNNs) have taken the lead for many learning tasks, action recog...
Human action recognition is still a challenging problem and researchers are focusing to investigate ...
Human action recognition is attempting to identify what kind of action is being performed in a given...
ABSTRACT : Human action recognition is still a challenging problem and researchers are focusing to ...
We investigate architectures of discriminatively trained deep Convolutional Networks (ConvNets) for ...
We introduce a simple yet effective network that embeds a novel Discriminative Feature Pooling (DFP)...
Convolutional neural network(CNN) models have been extensively used in recent years to solve the pro...