A multimedia retrieval framework based on semi-supervised ranking and relevance feedback
We present a new framework for multimedia content analysis and retrieval which consists of two independent algorithms. First, we propose a new semi-supervised algorithm called ranking with Local Regression and Global Alignment (LRGA) to learn a robust Laplacian matrix for data ranking. In LRGA, for...
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sg-ntu-dr.10356-993482020-05-28T07:18:16Z A multimedia retrieval framework based on semi-supervised ranking and relevance feedback Yang, Yi Nie, Feiping Xu, Dong Luo, Jiebo Zhuang, Yueting Pan, Yunhe School of Computer Engineering DRNTU::Engineering::Computer science and engineering We present a new framework for multimedia content analysis and retrieval which consists of two independent algorithms. First, we propose a new semi-supervised algorithm called ranking with Local Regression and Global Alignment (LRGA) to learn a robust Laplacian matrix for data ranking. In LRGA, for each data point, a local linear regression model is used to predict the ranking scores of its neighboring points. A unified objective function is then proposed to globally align the local models from all the data points so that an optimal ranking score can be assigned to each data point. Second, we propose a semi-supervised long-term Relevance Feedback (RF) algorithm to refine the multimedia data representation. The proposed long-term RF algorithm utilizes both the multimedia data distribution in multimedia feature space and the history RF information provided by users. A trace ratio optimization problem is then formulated and solved by an efficient algorithm. The algorithms have been applied to several content-based multimedia retrieval applications, including cross-media retrieval, image retrieval, and 3D motion/pose data retrieval. Comprehensive experiments on four data sets have demonstrated its advantages in precision, robustness, scalability, and computational efficiency. 2013-09-16T08:09:30Z 2019-12-06T20:06:19Z 2013-09-16T08:09:30Z 2019-12-06T20:06:19Z 2012 2012 Journal Article Yang, Y., Nie, F., Xu, D., Luo, J., Zhuang, Y. & Pan, Y. (2012). A Multimedia Retrieval Framework Based on Semi-Supervised Ranking and Relevance Feedback. IEEE Transactions on Pattern Analysis and Machine Intelligence, 34(4), 723-742. 0162-8828 https://hdl.handle.net/10356/99348 http://hdl.handle.net/10220/13497 10.1109/TPAMI.2011.170 en IEEE transactions on pattern analysis and machine intelligence © 2012 IEEE |
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DRNTU::Engineering::Computer science and engineering Yang, Yi Nie, Feiping Xu, Dong Luo, Jiebo Zhuang, Yueting Pan, Yunhe A multimedia retrieval framework based on semi-supervised ranking and relevance feedback |
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We present a new framework for multimedia content analysis and retrieval which consists of two independent algorithms. First, we propose a new semi-supervised algorithm called ranking with Local Regression and Global Alignment (LRGA) to learn a robust Laplacian matrix for data ranking. In LRGA, for each data point, a local linear regression model is used to predict the ranking scores of its neighboring points. A unified objective function is then proposed to globally align the local models from all the data points so that an optimal ranking score can be assigned to each data point. Second, we propose a semi-supervised long-term Relevance Feedback (RF) algorithm to refine the multimedia data representation. The proposed long-term RF algorithm utilizes both the multimedia data distribution in multimedia feature space and the history RF information provided by users. A trace ratio optimization problem is then formulated and solved by an efficient algorithm. The algorithms have been applied to several content-based multimedia retrieval applications, including cross-media retrieval, image retrieval, and 3D motion/pose data retrieval. Comprehensive experiments on four data sets have demonstrated its advantages in precision, robustness, scalability, and computational efficiency. |
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School of Computer Engineering |
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School of Computer Engineering Yang, Yi Nie, Feiping Xu, Dong Luo, Jiebo Zhuang, Yueting Pan, Yunhe |
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Article |
author |
Yang, Yi Nie, Feiping Xu, Dong Luo, Jiebo Zhuang, Yueting Pan, Yunhe |
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Yang, Yi |
title |
A multimedia retrieval framework based on semi-supervised ranking and relevance feedback |
title_short |
A multimedia retrieval framework based on semi-supervised ranking and relevance feedback |
title_full |
A multimedia retrieval framework based on semi-supervised ranking and relevance feedback |
title_fullStr |
A multimedia retrieval framework based on semi-supervised ranking and relevance feedback |
title_full_unstemmed |
A multimedia retrieval framework based on semi-supervised ranking and relevance feedback |
title_sort |
multimedia retrieval framework based on semi-supervised ranking and relevance feedback |
publishDate |
2013 |
url |
https://hdl.handle.net/10356/99348 http://hdl.handle.net/10220/13497 |
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