The trecvid 2008 BBC rushes summarization evaluation

This paper describes an evaluation of automatic video summarization systems run on rushes from several BBC dramatic series. It was carried out under the auspices of the TREC Video Retrieval Evaluation (TRECVid) as a followup to the 2007 video summarization workshop held at ACM Multimedia 2007. 31 research teams submitted video summaries of 40 individual rushes video files, aiming to compress out redundant and insignificant material. Each summary had a duration of at most 2% of the original. The output of a baseline system, which simply presented each full video at 50 times normal speed was contributed by Carnegie Mellon University (CMU) as a control. The 2007 procedures for developing ground truth lists of important segments from each video were applied at the National Institute of Standards and Technology (NIST) to the BBC videos. At Dublin City University (DCU) each summary was judged by 3 humans with respect to how much of the ground truth was included and how well-formed the summary was. Additional objective measures included: how long it took the system to create the summary, how long it took the assessor to judge it against the ground truth, and what the summary's duration was. Assessor agreement on finding desired segments averaged 81%. Results indicated that while it was still difficult to exceed the performance of the baseline on including ground truth, the baseline was outperformed by most other systems with respect to avoiding redundancy/junk and presenting the summary with a pleasant tempo/rhythm.

[1]  Yan Liu,et al.  Rushes video summarization using audio-visual information and sequence alignment , 2008, TVS '08.

[2]  Zygmunt Pizlo,et al.  Automated video program summarization using speech transcripts , 2006, IEEE Transactions on Multimedia.

[3]  Wei-Hao Lin,et al.  Exploring the utility of fast-forward surrogates for bbc rushes , 2008, TVS '08.

[4]  David C. Gibbon,et al.  Brief and high-interest video summary generation: evaluating the AT&T labs rushes summarizations , 2008, TVS '08.

[5]  Duy-Dinh Le,et al.  Rushes summarization using different redundancy elimination approaches , 2008, TVS '08.

[6]  Pablo Toharia,et al.  Combining activity and temporal coherence with low-level information for summarization of video rushes , 2008, TVS '08.

[7]  Matthieu Cord,et al.  Rushes summarization by IRIM consortium: redundancy removal and multi-feature fusion , 2008, TVS '08.

[8]  Jinchang Ren,et al.  Hierarchical Modeling and Adaptive Clustering for Real-Time Summarization of Rush Videos , 2009, IEEE Transactions on Multimedia.

[9]  Ba Tu Truong,et al.  Video abstraction: A systematic review and classification , 2007, TOMCCAP.

[10]  Adel M. Alimi,et al.  Regim, research group on intelligent machines, tunisia, at TRECVID 2008, BBC rushes summarization , 2008, TVS '08.

[11]  John Adcock,et al.  A simplified approach to rushes summarization , 2008, TVS '08.

[12]  Alan F. Smeaton,et al.  Rushes video summarization using a collaborative approach , 2008, TVS '08.

[13]  Bernard Mérialdo,et al.  Sequence alignment for redundancy removal in video rushes summarization , 2008, TVS '08.

[14]  Keiji Yanai,et al.  Rushes summarization based on color, motion and face , 2008, TVS '08.

[15]  Noel E. O'Connor,et al.  Dublin City University at the TRECVid 2008 BBC rushes summarisation task , 2008, TVS '08.

[16]  Nikolas P. Galatsanos,et al.  Video rushes summarization using spectral clustering and sequence alignment , 2008, TVS '08.

[17]  Nobuyuki Yagi,et al.  Video rushes summarization utilizing retake characteristics , 2008, TVS '08.

[18]  Koichi Shinoda,et al.  Automatically estimating number of scenes for rushes summarization , 2008, TVS '08.

[19]  Werner Bailer,et al.  Comparison of content selection methods for skimming rushes video , 2008, TVS '08.

[20]  Dian Tjondronegoro,et al.  Efficient generation of pleasant video summaries , 2008, TVS '08.

[21]  Jenny Benois-Pineau,et al.  The COST292 experimental framework for rushes summarization task in TRECVID 2008 , 2008, TVS '08.

[22]  Patrick Lambert,et al.  Video summarization from spatio-temporal features , 2008, TVS '08.

[23]  Christophe Marsala,et al.  Adaptive acceleration and shot stacking for video rushes summarization , 2008, TVS '08.

[24]  Joemon M. Jose,et al.  Video redundancy detection in rushes collection , 2008, TVS '08.

[25]  José María Martínez Sanchez,et al.  Binary tree based on-line video summarization , 2008, TVS '08.

[26]  Paul Over,et al.  Evaluation campaigns and TRECVid , 2006, MIR '06.

[27]  Matthieu Cord,et al.  Summarization scheme based on near-duplicate analysis , 2008, TVS '08.

[28]  Pavel Zemcík,et al.  Video summarization at Brno university of technology , 2008, TVS '08.

[29]  Paul Over,et al.  The trecvid 2007 BBC rushes summarization evaluation pilot , 2007, TVS '07.

[30]  Paul Over,et al.  TRECVID: evaluating the effectiveness of information retrieval tasks on digital video , 2004, MULTIMEDIA '04.

[31]  Paul Over,et al.  TRECVID: Benchmarking the Effectivenss of Information Retrieval Tasks on Digital Video , 2003, CIVR.

[32]  B. Manly Randomization, Bootstrap and Monte Carlo Methods in Biology , 2018 .

[33]  Joemon M. Jose,et al.  Rushes Redundancy Detection , 2008 .

[34]  Jinchang Ren,et al.  Hierarchical modeling and adaptive clustering for real-time summarization of rush videos in trecvid'08 , 2008, TVS '08.

[35]  Wei Zhang,et al.  THU-intel at rushes summarization of TRECVID 2008 , 2008, TVS '08.