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 Tsunghan Tsai

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Average citations per article1.33
Citation Count4
Publication count3
Publication years2012-2013
Available for download1
Average downloads per article260.00
Downloads (cumulative)260
Downloads (12 Months)23
Downloads (6 Weeks)6
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1 published by ACM
November 2013 ACM Transactions on Information Systems (TOIS): Volume 31 Issue 4, November 2013
Publisher: ACM
Bibliometrics:
Citation Count: 2
Downloads (6 Weeks): 6,   Downloads (12 Months): 23,   Downloads (Overall): 260

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In this article, we study the efficiency problem of video stream near-duplicate monitoring in a large-scale repository. Existing stream monitoring methods are mainly designed for a short video to scan over a query stream; they have difficulty being scalable for a large number of long videos. We present a simple ...
Keywords: Near-duplicate, content-based retrieval, inverted indexing, video copy

2
April 2013 Neurocomputing: Volume 105, April, 2013
Publisher: Elsevier Science Publishers B. V.
Bibliometrics:
Citation Count: 0

Content-based video copy detection has grabbed an increasing attention in the video search community due to the rapid proliferation of video copies over the Internet. Most existing techniques of video copy detection focus on spatial-based video transformations such as brightness enhancement and caption superimposition. It can be accomplished efficiently by ...
Keywords: Spatial and temporal video transformation, Content-based retrieval, Near-duplicate detection

3
July 2012 IEEE Transactions on Circuits and Systems for Video Technology: Volume 22 Issue 7, July 2012
Publisher: IEEE Press
Bibliometrics:
Citation Count: 1

Sports video annotation, an active research area in the field of multimedia content understanding, is an essential process in applications, such as summarization, highlight extraction, event detection, and retrieval. This paper considers the issue in relation to the annotation of baseball videos. Conventional baseball video annotation frameworks are based primarily ...



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