Title
Automatic summarization of music videos
Abstract
In this article, we propose a novel approach for automatic music video summarization. The proposed summarization scheme is different from the current methods used for video summarization. The music video is separated into the music track and video track. For the music track, a music summary is created by analyzing the music content using music features, an adaptive clustering algorithm, and music domain knowledge. Then, shots in the video track are detected and clustered. Finally, the music video summary is created by aligning the music summary and clustered video shots. Subjective studies by experienced users have been conducted to evaluate the quality of music summaries and effectiveness of the proposed summarization approach. Experiments are performed on different genres of music videos and comparisons are made with the summaries generated based on music track, video track, and manually. The evaluation results indicate that summaries generated using the proposed method are effective in helping realize users' expectations.
Year
DOI
Venue
2006
10.1145/1142020.1142023
TOMCCAP
Keywords
Field
DocType
video summarization,video track,music feature,music summary,music domain knowledge,music track,automatic summarization,automatic music video summarization,music summarization,music video summary,music content,video shot,music video,video tracking,domain knowledge,algorithms,performance
Automatic summarization,Multi-document summarization,Domain knowledge,Computer science,Cluster analysis,Multimedia
Journal
Volume
Issue
ISSN
2
2
1551-6857
Citations 
PageRank 
References 
9
0.55
22
Authors
6
Name
Order
Citations
PageRank
Xi Shao122619.08
Changsheng Xu24957332.87
Namunu C. Maddage334526.51
Qi Tian4134475.83
Mohan Kankanhalli53825299.56
Jesse S. Jin670585.36