In this project, the problem addressed is human activity recognition (HAR) from video sequence. The focussing in this project is to annotate objects and actions in video using Convolutional Neural Network (CNN) and map their temporal relationship using full connected layer and softmax layer. The contribution is a deep learning fusion framework that more effectively exploits spatial features from CNN model (Inception v3 model) and combined with fully connected layer and softmax layer for classifying the action in dataset. Dataset used was UCF11 with 11 classes of human action. This project also extensively evaluate their strength and weakness compared previous project. By combining both the set of features between Inception v3 model with ful...
Automatic understanding of videos is one of the most active areas of computer vision research. It ha...
Human action recognition is attempting to identify what kind of action is being performed in a given...
Recurrent neural network (RNN) telah mencapai kesuksesan dalam memproses data sekuensial dan menjadi...
In this fast pacing world, computers are also getting better in terms of their performance and speed...
Two-stream convolutional networks plays an essential role as a powerful feature extractor in human a...
Recently, deep learning approach has been used widely in order to enhance the recognition accuracy w...
There has been a tremendous increase in internet users and enough bandwidth in recent years. Because...
Within a large range of applications in computer vision, Human Action Recognition has become one of ...
In this paper, we present a new deep learning-based human activity recognition technique. First, we ...
The process of identifying a specific event from a video is a relatively easy task for humans. Howev...
Classification of human actions from real-world video data is one of the most important topics in co...
Abstract A convolutional neural network (CNN) is an important and widely utilized part of the artifi...
© 2017 IEEE. Video-based human action recognition has become one of the most popular research areas ...
Automated human action recognition is one of the most attractive and practical research fields in co...
Our focus in this research is on the use of deep learning approaches for human activity recognition ...
Automatic understanding of videos is one of the most active areas of computer vision research. It ha...
Human action recognition is attempting to identify what kind of action is being performed in a given...
Recurrent neural network (RNN) telah mencapai kesuksesan dalam memproses data sekuensial dan menjadi...
In this fast pacing world, computers are also getting better in terms of their performance and speed...
Two-stream convolutional networks plays an essential role as a powerful feature extractor in human a...
Recently, deep learning approach has been used widely in order to enhance the recognition accuracy w...
There has been a tremendous increase in internet users and enough bandwidth in recent years. Because...
Within a large range of applications in computer vision, Human Action Recognition has become one of ...
In this paper, we present a new deep learning-based human activity recognition technique. First, we ...
The process of identifying a specific event from a video is a relatively easy task for humans. Howev...
Classification of human actions from real-world video data is one of the most important topics in co...
Abstract A convolutional neural network (CNN) is an important and widely utilized part of the artifi...
© 2017 IEEE. Video-based human action recognition has become one of the most popular research areas ...
Automated human action recognition is one of the most attractive and practical research fields in co...
Our focus in this research is on the use of deep learning approaches for human activity recognition ...
Automatic understanding of videos is one of the most active areas of computer vision research. It ha...
Human action recognition is attempting to identify what kind of action is being performed in a given...
Recurrent neural network (RNN) telah mencapai kesuksesan dalam memproses data sekuensial dan menjadi...