SOML: Sparse Online Metric Learning with Application to Image Retrieval
Gao, Xingyu (Chinese Academy of Sciences and Nanyang Technological University) | Hoi, Steven C.H. (Nanyang Technological University) | Zhang, Yongdong (Chinese Academy of Sciences) | Wan, Ji (Chinese Academy of Sciences and Nanyang Technological University) | Li, Jintao (Chinese Academy of Sciences)
Image similarity search plays a key role in many multimediaapplications, where multimedia data (such as images and videos) areusually represented in high-dimensional feature space. In thispaper, we propose a novel Sparse Online Metric Learning (SOML)scheme for learning sparse distance functions from large-scalehigh-dimensional data and explore its application to imageretrieval. In contrast to many existing distance metric learningalgorithms that are often designed for low-dimensional data, theproposed algorithms are able to learn sparse distance metrics fromhigh-dimensional data in an efficient and scalable manner. Ourexperimental results show that the proposed method achieves betteror at least comparable accuracy performance than thestate-of-the-art non-sparse distance metric learning approaches, butenjoys a significant advantage in computational efficiency andsparsity, making it more practical for real-world applications.
Jul-14-2014
- Country:
- Asia > China (0.15)
- North America > United States (0.14)
- Genre:
- Instructional Material > Online (0.64)
- Research Report > New Finding (0.66)
- Industry:
- Education (0.48)
- Technology: