Multimedia based Information Retrieval Approach based on ASR and OCR and Video Recommendation System
@article{Bhabad2017MultimediaBI, title={Multimedia based Information Retrieval Approach based on ASR and OCR and Video Recommendation System}, author={Dnyaneshwar T. Bhabad and Shanthi Therese and M. Gedam}, journal={2017 International Conference on Current Trends in Computer, Electrical, Electronics and Communication (CTCEEC)}, year={2017}, pages={1168-1172} }
Lecture videos and e-learning are upcoming effective learning resources. Getting the appropriate lecture video out of all video archives available on the internet is not an easy task. Analyzing the video title, description and other static metadata contents is not sufficient to find the relevance of a video. This paper presents an approach for lecture video analysis based on the content of the video. We apply video segmentation to retrieve the frames from given video at specific time interval… Expand
One Citation
A new challenge on video recommendation by content
- Computer Science
- 2019 14th International Conference on Computer Engineering and Systems (ICCES)
- 2019
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