Visual Summarization of Lecture Video Segments for Enhanced Navigation
Mohammad Rajiur Rahman, Jaspal Subhlok, Shishir Shah

TL;DR
This paper presents a novel visual summarization method for lecture videos, improving navigation by automatically selecting representative images from segments, validated through user surveys and integrated into a management portal.
Contribution
The paper introduces a new graph-based algorithm for generating visual summaries of lecture video segments, enhancing content navigation and retrieval.
Findings
Achieves 78% precision and 72% F1-measure in image selection.
Over 65% of summaries rated as good or very good by users.
Method produces high-quality visual summaries useful for navigation.
Abstract
Lecture videos are an increasingly important learning resource for higher education. However, the challenge of quickly finding the content of interest in a lecture video is an important limitation of this format. This paper introduces visual summarization of lecture video segments to enhance navigation. A lecture video is divided into segments based on the frame-to-frame similarity of content. The user navigates the lecture video content by viewing a single frame visual and textual summary of each segment. The paper presents a novel methodology to generate the visual summary of a lecture video segment by computing similarities between images extracted from the segment and employing a graph-based algorithm to identify the subset of most representative images. The results from this research are integrated into a real-world lecture video management portal called Videopoints. To collect…
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