© Springer Nature Switzerland AG 2020. With more and more lecture, videos are available on the Internet, on-line learning and e-learning are getting increasing concerns because of many advantages such as high degree of interactivity. The semantic content discovery for lecture video is a key problem. In this paper, we propose a Multi-modal LDA model, which discovers the semantic topics of lecture videos by considering audio and visual information. Specifically, the speaking content and the information of presentation slides are extracted from the lecture videos. With the proposed inference and learning algorithm, the semantic topics of the video can be discovered. The experimental results show that the proposed method can effectively discove...
In multimedia-based e-Learning systems, there are strong needs for segmenting lecture videos into to...
In this paper, we propose a new framework to annotating subtitled YouTube EDU media fragments using ...
The aim of the paper is to provide a framework for the automatic generation of topic-based user inte...
E-learning has presented new opportunities for learning with the rapid development of information an...
The advent of MOOC platforms brought an abundance of video educational content that made the selecti...
In this article, we present a dataset containing word embeddings and document topic distribution vec...
In this article, we present a dataset containing word embeddings and document topic distribution vec...
With the rising trend of distance education and open source concept, multime- dia lecture video has ...
The automatic analysis and indexing of multimedia content in general domains are important for a var...
Multimedia is the main source for online learning materials, such as videos, slides and textbooks, a...
Application of Topic Models in text mining of educational data and more specifically, the text data ...
Many universities adopt educational systems where the teacher lecture is video recorded and the vide...
Videos recorded during in-class teaching and made accessible online are a versatile resource on par ...
This paper presents an unified approach in analyzing and Structuring the content of videotaped lectu...
E-Learning is rapidly changing the way that universities and corporations offer education and traini...
In multimedia-based e-Learning systems, there are strong needs for segmenting lecture videos into to...
In this paper, we propose a new framework to annotating subtitled YouTube EDU media fragments using ...
The aim of the paper is to provide a framework for the automatic generation of topic-based user inte...
E-learning has presented new opportunities for learning with the rapid development of information an...
The advent of MOOC platforms brought an abundance of video educational content that made the selecti...
In this article, we present a dataset containing word embeddings and document topic distribution vec...
In this article, we present a dataset containing word embeddings and document topic distribution vec...
With the rising trend of distance education and open source concept, multime- dia lecture video has ...
The automatic analysis and indexing of multimedia content in general domains are important for a var...
Multimedia is the main source for online learning materials, such as videos, slides and textbooks, a...
Application of Topic Models in text mining of educational data and more specifically, the text data ...
Many universities adopt educational systems where the teacher lecture is video recorded and the vide...
Videos recorded during in-class teaching and made accessible online are a versatile resource on par ...
This paper presents an unified approach in analyzing and Structuring the content of videotaped lectu...
E-Learning is rapidly changing the way that universities and corporations offer education and traini...
In multimedia-based e-Learning systems, there are strong needs for segmenting lecture videos into to...
In this paper, we propose a new framework to annotating subtitled YouTube EDU media fragments using ...
The aim of the paper is to provide a framework for the automatic generation of topic-based user inte...