In this paper, we propose a robust statistical framework for extracting scenes from a baseball broadcast video. We apply multi-stream hidden Markov models (HMMs) to control the weights among different features. To achieve a large robustness against new scenes, we used a common simple structure for all the HMMs. In addition, scene segmentation and unsupervised adaptation were applied to achieve greater robustness against differences in environmental conditions among games. The F-measure of scene-extracting experiments for eight types of scene from 4.5 hours of digest data was 77.4% and was increased to 78.7% by applying scene segmentation. Furthermore, the unsupervised adaptation method improved precision by 2.7 points to 81.4%. These results confirm the effectiveness of our framework.
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Nguyen Huu BACH, Koichi SHINODA, Sadaoki FURUI, "Robust Scene Extraction Using Multi-Stream HMMs for Baseball Broadcast" in IEICE TRANSACTIONS on Information,
vol. E89-D, no. 9, pp. 2553-2561, September 2006, doi: 10.1093/ietisy/e89-d.9.2553.
Abstract: In this paper, we propose a robust statistical framework for extracting scenes from a baseball broadcast video. We apply multi-stream hidden Markov models (HMMs) to control the weights among different features. To achieve a large robustness against new scenes, we used a common simple structure for all the HMMs. In addition, scene segmentation and unsupervised adaptation were applied to achieve greater robustness against differences in environmental conditions among games. The F-measure of scene-extracting experiments for eight types of scene from 4.5 hours of digest data was 77.4% and was increased to 78.7% by applying scene segmentation. Furthermore, the unsupervised adaptation method improved precision by 2.7 points to 81.4%. These results confirm the effectiveness of our framework.
URL: https://globals.ieice.org/en_transactions/information/10.1093/ietisy/e89-d.9.2553/_p
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@ARTICLE{e89-d_9_2553,
author={Nguyen Huu BACH, Koichi SHINODA, Sadaoki FURUI, },
journal={IEICE TRANSACTIONS on Information},
title={Robust Scene Extraction Using Multi-Stream HMMs for Baseball Broadcast},
year={2006},
volume={E89-D},
number={9},
pages={2553-2561},
abstract={In this paper, we propose a robust statistical framework for extracting scenes from a baseball broadcast video. We apply multi-stream hidden Markov models (HMMs) to control the weights among different features. To achieve a large robustness against new scenes, we used a common simple structure for all the HMMs. In addition, scene segmentation and unsupervised adaptation were applied to achieve greater robustness against differences in environmental conditions among games. The F-measure of scene-extracting experiments for eight types of scene from 4.5 hours of digest data was 77.4% and was increased to 78.7% by applying scene segmentation. Furthermore, the unsupervised adaptation method improved precision by 2.7 points to 81.4%. These results confirm the effectiveness of our framework.},
keywords={},
doi={10.1093/ietisy/e89-d.9.2553},
ISSN={1745-1361},
month={September},}
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TY - JOUR
TI - Robust Scene Extraction Using Multi-Stream HMMs for Baseball Broadcast
T2 - IEICE TRANSACTIONS on Information
SP - 2553
EP - 2561
AU - Nguyen Huu BACH
AU - Koichi SHINODA
AU - Sadaoki FURUI
PY - 2006
DO - 10.1093/ietisy/e89-d.9.2553
JO - IEICE TRANSACTIONS on Information
SN - 1745-1361
VL - E89-D
IS - 9
JA - IEICE TRANSACTIONS on Information
Y1 - September 2006
AB - In this paper, we propose a robust statistical framework for extracting scenes from a baseball broadcast video. We apply multi-stream hidden Markov models (HMMs) to control the weights among different features. To achieve a large robustness against new scenes, we used a common simple structure for all the HMMs. In addition, scene segmentation and unsupervised adaptation were applied to achieve greater robustness against differences in environmental conditions among games. The F-measure of scene-extracting experiments for eight types of scene from 4.5 hours of digest data was 77.4% and was increased to 78.7% by applying scene segmentation. Furthermore, the unsupervised adaptation method improved precision by 2.7 points to 81.4%. These results confirm the effectiveness of our framework.
ER -