|Table of Contents|

[1] Zuo Xin, Luo Limin, Shen Jifeng, et al. Learning compact binary codebased on multiple heterogeneous features [J]. Journal of Southeast University (English Edition), 2013, 29 (4): 372-378. [doi:10.3969/j.issn.1003-7985.2013.04.004]
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Learning compact binary codebased on multiple heterogeneous features()
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Journal of Southeast University (English Edition)[ISSN:1003-7985/CN:32-1325/N]

Volumn:
29
Issue:
2013 4
Page:
372-378
Research Field:
Computer Science and Engineering
Publishing date:
2013-12-20

Info

Title:
Learning compact binary codebased on multiple heterogeneous features
Author(s):
Zuo Xin1 2 Luo Limin1 Shen Jifeng3 Yu Hualong2
1Laboratory of Image Science and Technology, Southeast University, Nanjing 210096, China
2 School of Computer Science and Engineering, Jiangsu University of Science and Technology, Zhenjiang 212003, China
3School of Electrical and Information Engineering, Jiangsu University, Zhenjiang 212013, China
Keywords:
hashing code linear discriminate analysis asymmetric boosting heterogeneous feature
PACS:
TP391.3
DOI:
10.3969/j.issn.1003-7985.2013.04.004
Abstract:
A novel hashing method based on multiple heterogeneous features is proposed to improve the accuracy of the image retrieval system. First, it leverages the imbalanced distribution of the similar and dissimilar samples in the feature space to boost the performance of each weak classifier in the asymmetric boosting framework. Then, the weak classifier based on a novel linear discriminate analysis(LDA)algorithm which is learned from the subspace of heterogeneous features is integrated into the framework. Finally, the proposed method deals with each bit of the code sequentially, which utilizes the samples misclassified in each round in order to learn compact and balanced code. The heterogeneous information from different modalities can be effectively complementary to each other, which leads to much higher performance. The experimental results based on the two public benchmarks demonstrate that this method is superior to many of the state-of-the-art methods. In conclusion, the performance of the retrieval system can be improved with the help of multiple heterogeneous features and the compact hash codes which can be learned by the imbalanced learning method.

References:

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Memo

Memo:
Biographies: Zuo Xin(1980—), female, graduate; Luo Limin(corresponding author), male, doctor, professor, luo.list@seu.edu.cn.
Foundation items: The National Natural Science Foundation of China(No.61305058), the Natural Science Foundation of Higher Education Institutions of Jiangsu Province(No.12KJB520003), the Natural Science Foundation of Jiangsu Province(No.BK20130471), the Scientific Research Foundation for Advanced Talents by Jiangsu University(No.13JDG093).
Citation: Zuo Xin, Luo Limin, Shen Jifeng, et al. Learning compact binary code based on multiple heterogeneous features.[J].Journal of Southeast University(English Edition), 2013, 29(4):372-378.[doi:10.3969/j.issn.1003-7985.2013.04.004]
Last Update: 2013-12-20