- 요약
- Abstract
- Ⅰ. 서론
- Ⅱ. ST-MRF 모델 기반 객체 추적 방법
- Ⅲ. 제안하는 객체 추적 방법
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https://www.riss.kr/link?id=A100520421
2015
Korean
567
KCI등재
학술저널
449-463(15쪽)
2
0
상세조회0
다운로드목차 (Table of Contents)
참고문헌 (Reference)
1 S. H. Khatoonabadi, "Video object tracking in the compressed domain using spatio-temporal Markov Random Fields" 22 (22): 300-313, 2013
2 S. Geman, "Stochastic relaxation, Gibbs distributions, and the Bayesian restoration of images" 6 (6): 721-741, 1984
3 S. Treetasanatavorn, "Stochastic motion coherency analysis for motion vector field segmentation on compressed video sequences" 1-4, 2005
4 J. E. Besag, "Spatial interaction and the statistical analysis of lattice systems" 36 (36): 192-236, 1974
5 W. Zeng, "Robust moving object segmentation on H. 264/AVC compressed video using the block-based MRF model" 11 (11): 290-299, 2005
6 C. M. Mak, "Real-time video object segmentation in H. 264 compressed domain" 3 (3): 2009
7 V. Mezaris, "Real-time compressed-domain spatiotemporal segmentation and ontologies for video indexing and retrieval" 14 (14): 606-621, 2004
8 J. Besag, "On the statistical analysis of dirty pictures" 48 (48): 259-302, 1986
9 R. Hartley, "Multiple View Geometry in Computer Vision" Cambridge Univ. Press 39-44, 2004
10 Y. M. Chen, "Moving region segmentation from compressed video using global motion estimation and markov random fields" 13 (13): 2011
1 S. H. Khatoonabadi, "Video object tracking in the compressed domain using spatio-temporal Markov Random Fields" 22 (22): 300-313, 2013
2 S. Geman, "Stochastic relaxation, Gibbs distributions, and the Bayesian restoration of images" 6 (6): 721-741, 1984
3 S. Treetasanatavorn, "Stochastic motion coherency analysis for motion vector field segmentation on compressed video sequences" 1-4, 2005
4 J. E. Besag, "Spatial interaction and the statistical analysis of lattice systems" 36 (36): 192-236, 1974
5 W. Zeng, "Robust moving object segmentation on H. 264/AVC compressed video using the block-based MRF model" 11 (11): 290-299, 2005
6 C. M. Mak, "Real-time video object segmentation in H. 264 compressed domain" 3 (3): 2009
7 V. Mezaris, "Real-time compressed-domain spatiotemporal segmentation and ontologies for video indexing and retrieval" 14 (14): 606-621, 2004
8 J. Besag, "On the statistical analysis of dirty pictures" 48 (48): 259-302, 1986
9 R. Hartley, "Multiple View Geometry in Computer Vision" Cambridge Univ. Press 39-44, 2004
10 Y. M. Chen, "Moving region segmentation from compressed video using global motion estimation and markov random fields" 13 (13): 2011
11 W. Fei, "Mean shift clustering-based moving object segmentation in the H. 264 compressed domain" 4 (4): 11-18, 2010
12 B. Bross, "High Efficiency Video Coding(HEVC)Text Specification Draft 10"
13 M. G. Arvanitidou, "Global motion estimation using variable block sizes and its application to object segmentation" 173-176, 2009
14 D. M. Park, "Fast ST-MRF tracking using ROI-based GMC" 2014
15 S. Treetasanatavorn, "Bayesian method for motion segmentation and tracking in compressed videos" 277-284, 2005
16 C. Käs, "An approach to trajectory estimation of moving objects in the H. 264 compressed domain" 318-329, 2009
17 ITU-T, "Advanced Video Coding for Generic Audiovisual Services"
Generation of Stereoscopic Image from 2D Image based on Saliency and Edge Modeling
학술지 이력
연월일 | 이력구분 | 이력상세 | 등재구분 |
---|---|---|---|
2026 | 평가예정 | 재인증평가 신청대상 (재인증) | |
2020-01-01 | 평가 | 등재학술지 유지 (재인증) | |
2017-01-01 | 평가 | 등재학술지 유지 (계속평가) | |
2016-01-15 | 학회명변경 | 한글명 : 한국방송공학회 -> 한국방송∙미디어공학회영문명 : The Korean Society Of Broadcast Engineers -> The Korean Institute of Broadcast and Media Engineers | |
2013-01-01 | 평가 | 등재학술지 유지 (등재유지) | |
2010-01-01 | 평가 | 등재학술지 유지 (등재유지) | |
2007-01-01 | 평가 | 등재학술지 선정 (등재후보2차) | |
2006-01-01 | 평가 | 등재후보 1차 PASS (등재후보1차) | |
2004-01-01 | 평가 | 등재후보학술지 선정 (신규평가) |
학술지 인용정보
기준연도 | WOS-KCI 통합IF(2년) | KCIF(2년) | KCIF(3년) |
---|---|---|---|
2016 | 0.38 | 0.38 | 0.34 |
KCIF(4년) | KCIF(5년) | 중심성지수(3년) | 즉시성지수 |
0.32 | 0.27 | 0.526 | 0.14 |