This project aims to apply deep neural networks to classify video clips in applications used to streamline advertisements on the web. The system focuses on sport clips but can be expanded into other advertisement fields with lower accuracy and longer training times as a consequence. The main task was to find the neural network model best suited for classifying videos. To achieve this the field was researched and three network models were introduced to see how they could handle the videos. It was proposed that applying a recurrent LSTM structure at the end of an image classification network could make it well adapted to work with videos. The most popular image classification architectures are mostly convolutional neural networks and these st...
Recent progress in sports analytics has been driven by the availability of spatio-temporal and high ...
With today’s digital revolution, many people communicate and collaborate in cyberspace. Users rely o...
In this work is presented a novel approach for the classification of audio concepts in broadcast so...
This project aims to apply deep neural networks to classify video clips in applications used to stre...
The computer vision community has taken a keen interest in recent developments in activity recogniti...
A sports training video classification model based on deep learning is studied for targeting low cla...
Deep convolutional neural networks have lately dominated scene understanding tasks, particularly tho...
The process of identifying a specific event from a video is a relatively easy task for humans. Howev...
The video classification task has gained significant success in the recent years. Specifically, the ...
In this paper, we propose a method for classification of sport videos using edge-based features, nam...
This paper deals with classifying objects using deep neural networks. Whole scene segmentation was u...
This article describes how the human activity recognition in videos is a very attractive topic among...
Broadcasters produce enormous numbers of sport videos in cyberspace due to massive viewership and co...
Automated analysis of videos for content understanding is one of the most challenging and well resea...
Graduation date: 2017Access restricted to the OSU Community, at author's request, from December 13, ...
Recent progress in sports analytics has been driven by the availability of spatio-temporal and high ...
With today’s digital revolution, many people communicate and collaborate in cyberspace. Users rely o...
In this work is presented a novel approach for the classification of audio concepts in broadcast so...
This project aims to apply deep neural networks to classify video clips in applications used to stre...
The computer vision community has taken a keen interest in recent developments in activity recogniti...
A sports training video classification model based on deep learning is studied for targeting low cla...
Deep convolutional neural networks have lately dominated scene understanding tasks, particularly tho...
The process of identifying a specific event from a video is a relatively easy task for humans. Howev...
The video classification task has gained significant success in the recent years. Specifically, the ...
In this paper, we propose a method for classification of sport videos using edge-based features, nam...
This paper deals with classifying objects using deep neural networks. Whole scene segmentation was u...
This article describes how the human activity recognition in videos is a very attractive topic among...
Broadcasters produce enormous numbers of sport videos in cyberspace due to massive viewership and co...
Automated analysis of videos for content understanding is one of the most challenging and well resea...
Graduation date: 2017Access restricted to the OSU Community, at author's request, from December 13, ...
Recent progress in sports analytics has been driven by the availability of spatio-temporal and high ...
With today’s digital revolution, many people communicate and collaborate in cyberspace. Users rely o...
In this work is presented a novel approach for the classification of audio concepts in broadcast so...