Sequence Matching Based Automatic Retake Detection Framework for Rushes Video

Automatically selecting the important content from rushes video is a challenging task due to the difficulty in eliminating raw data, such as useless content and redundant content. Redundancy elimination is difficult since repetitive segments, which are takes of the same scene, usually have different...

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Main Authors: Narongsak Putpuek, Nagul Cooharojananone, Chidchanok Lursinsap, Shin’ichi Satoh
Language:English
Published: Science Faculty of Chiang Mai University 2019
Subjects:
LCS
SVD
Online Access:http://it.science.cmu.ac.th/ejournal/dl.php?journal_id=6256
http://cmuir.cmu.ac.th/jspui/handle/6653943832/66177
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Institution: Chiang Mai University
Language: English
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spelling th-cmuir.6653943832-661772019-08-21T09:18:23Z Sequence Matching Based Automatic Retake Detection Framework for Rushes Video Narongsak Putpuek Nagul Cooharojananone Chidchanok Lursinsap Shin’ichi Satoh rushes video sequence matching retake detection SIFT LCS SVD Automatically selecting the important content from rushes video is a challenging task due to the difficulty in eliminating raw data, such as useless content and redundant content. Redundancy elimination is difficult since repetitive segments, which are takes of the same scene, usually have different lengths and motion patterns. In this work, a new methodology is proposed to determine retakes in rushes video. The video is divided into shots by the proposed automatic shot boundary detection using local singular value decomposition and k-means clustering. Shots that contain the useless contents were eliminated by our proposed technique integrated a near duplicated key frame (NDK) algorithm. The local features of each remaining frames were extracted using the scale-invariant feature transform (SIFT) algorithm. The similarity between consecutive frames was calculated using SIFT matching and then converted into a string. The given strings were then concatenated into a longer string sequence to use as a shot representation. The similarity between each pair of sequences was evaluated using the longest common subsequence algorithm. Our method was evaluated in direct comparison with the conventional technique. Overall, when evaluated across the TRECVID 2007 and 2008 data sets that represent diverse styles of rushes videos, the proposed methodology provided a higher degree of accuracy in the detection of retakes in rushes videos. 2019-08-21T09:18:23Z 2019-08-21T09:18:23Z 2015 Chiang Mai Journal of Science 42, 4 (Oct 2015), 1005 - 1018 0125-2526 http://it.science.cmu.ac.th/ejournal/dl.php?journal_id=6256 http://cmuir.cmu.ac.th/jspui/handle/6653943832/66177 Eng Science Faculty of Chiang Mai University
institution Chiang Mai University
building Chiang Mai University Library
country Thailand
collection CMU Intellectual Repository
language English
topic rushes video
sequence matching
retake detection
SIFT
LCS
SVD
spellingShingle rushes video
sequence matching
retake detection
SIFT
LCS
SVD
Narongsak Putpuek
Nagul Cooharojananone
Chidchanok Lursinsap
Shin’ichi Satoh
Sequence Matching Based Automatic Retake Detection Framework for Rushes Video
description Automatically selecting the important content from rushes video is a challenging task due to the difficulty in eliminating raw data, such as useless content and redundant content. Redundancy elimination is difficult since repetitive segments, which are takes of the same scene, usually have different lengths and motion patterns. In this work, a new methodology is proposed to determine retakes in rushes video. The video is divided into shots by the proposed automatic shot boundary detection using local singular value decomposition and k-means clustering. Shots that contain the useless contents were eliminated by our proposed technique integrated a near duplicated key frame (NDK) algorithm. The local features of each remaining frames were extracted using the scale-invariant feature transform (SIFT) algorithm. The similarity between consecutive frames was calculated using SIFT matching and then converted into a string. The given strings were then concatenated into a longer string sequence to use as a shot representation. The similarity between each pair of sequences was evaluated using the longest common subsequence algorithm. Our method was evaluated in direct comparison with the conventional technique. Overall, when evaluated across the TRECVID 2007 and 2008 data sets that represent diverse styles of rushes videos, the proposed methodology provided a higher degree of accuracy in the detection of retakes in rushes videos.
author Narongsak Putpuek
Nagul Cooharojananone
Chidchanok Lursinsap
Shin’ichi Satoh
author_facet Narongsak Putpuek
Nagul Cooharojananone
Chidchanok Lursinsap
Shin’ichi Satoh
author_sort Narongsak Putpuek
title Sequence Matching Based Automatic Retake Detection Framework for Rushes Video
title_short Sequence Matching Based Automatic Retake Detection Framework for Rushes Video
title_full Sequence Matching Based Automatic Retake Detection Framework for Rushes Video
title_fullStr Sequence Matching Based Automatic Retake Detection Framework for Rushes Video
title_full_unstemmed Sequence Matching Based Automatic Retake Detection Framework for Rushes Video
title_sort sequence matching based automatic retake detection framework for rushes video
publisher Science Faculty of Chiang Mai University
publishDate 2019
url http://it.science.cmu.ac.th/ejournal/dl.php?journal_id=6256
http://cmuir.cmu.ac.th/jspui/handle/6653943832/66177
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