Video annotation using convolution neural network

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 con...

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主要作者: Wan Abd. Kadir, Wan Zahiruddin
格式: Thesis
语言:English
出版: 2018
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spelling my-utm-ep.790832018-09-27T06:07:25Z Video annotation using convolution neural network 2018-01 Wan Abd. Kadir, Wan Zahiruddin TK Electrical engineering. Electronics Nuclear engineering 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 fully connected layer and softmax layer can classify actions from UCF11 dataset effectively upto 100% for certain human actions. The lowest accuracy is 27% by using this method, because the background and motion is similar with other actions. The evaluation results demonstrate that this method can be used to classify action in video annotation. 2018-01 Thesis http://eprints.utm.my/id/eprint/79083/ http://eprints.utm.my/id/eprint/79083/1/WanZahiruddinWAbdKadirMFKE2018.pdf application/pdf en public http://dms.library.utm.my:8080/vital/access/manager/Repository/vital:108253 masters Universiti Teknologi Malaysia, Faculty of Electrical Engineering Faculty of Electrical Engineering
institution Universiti Teknologi Malaysia
collection UTM Institutional Repository
language English
topic TK Electrical engineering
Electronics Nuclear engineering
spellingShingle TK Electrical engineering
Electronics Nuclear engineering
Wan Abd. Kadir, Wan Zahiruddin
Video annotation using convolution neural network
description 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 fully connected layer and softmax layer can classify actions from UCF11 dataset effectively upto 100% for certain human actions. The lowest accuracy is 27% by using this method, because the background and motion is similar with other actions. The evaluation results demonstrate that this method can be used to classify action in video annotation.
format Thesis
qualification_level Master's degree
author Wan Abd. Kadir, Wan Zahiruddin
author_facet Wan Abd. Kadir, Wan Zahiruddin
author_sort Wan Abd. Kadir, Wan Zahiruddin
title Video annotation using convolution neural network
title_short Video annotation using convolution neural network
title_full Video annotation using convolution neural network
title_fullStr Video annotation using convolution neural network
title_full_unstemmed Video annotation using convolution neural network
title_sort video annotation using convolution neural network
granting_institution Universiti Teknologi Malaysia, Faculty of Electrical Engineering
granting_department Faculty of Electrical Engineering
publishDate 2018
url http://eprints.utm.my/id/eprint/79083/1/WanZahiruddinWAbdKadirMFKE2018.pdf
_version_ 1747818142624645120