Semi-supervised Hashing for Semi-Paired Cross-View Retrieval

Recently, hashing techniques have gained importance in large-scale retrieval tasks because of their retrieval speed. Most of the existing cross-view frameworks assume that data are well paired. However, the fully-paired multiview situation is not universal in real applications. The aim of the method proposed in this paper is to learn the hashing function for semi-paired cross-view retrieval tasks. To utilize the label information of partial data, we propose a semi-supervised hashing learning framework which jointly performs feature extraction and classifier learning. The experimental results on two datasets show that our method outperforms several state-of-the-art methods in terms of retrieval accuracy.

[1]  Dongqing Zhang,et al.  Large-Scale Supervised Multimodal Hashing with Semantic Correlation Maximization , 2014, AAAI.

[2]  Wei Liu,et al.  Hashing with Graphs , 2011, ICML.

[3]  Wu-Jun Li,et al.  Scalable Graph Hashing with Feature Transformation , 2015, IJCAI.

[4]  Yi Yang,et al.  Web and Personal Image Annotation by Mining Label Correlation With Relaxed Visual Graph Embedding , 2012, IEEE Transactions on Image Processing.

[5]  Fei Wang,et al.  Composite hashing with multiple information sources , 2011, SIGIR.

[6]  Wei Liu,et al.  Supervised Discrete Hashing , 2015, 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).

[7]  Svetlana Lazebnik,et al.  Locality-sensitive binary codes from shift-invariant kernels , 2009, NIPS.

[8]  Kristen Grauman,et al.  Kernelized locality-sensitive hashing for scalable image search , 2009, 2009 IEEE 12th International Conference on Computer Vision.

[9]  T. Yorozu,et al.  Electron Spectroscopy Studies on Magneto-Optical Media and Plastic Substrate Interface , 1987, IEEE Translation Journal on Magnetics in Japan.

[10]  Svetlana Lazebnik,et al.  Iterative quantization: A procrustean approach to learning binary codes , 2011, CVPR 2011.

[11]  Zi Huang,et al.  Multiple feature hashing for real-time large scale near-duplicate video retrieval , 2011, ACM Multimedia.

[12]  Heng Tao Shen,et al.  Semi-Paired Discrete Hashing: Learning Latent Hash Codes for Semi-Paired Cross-View Retrieval , 2017, IEEE Transactions on Cybernetics.

[13]  Ivor W. Tsang,et al.  Flexible Manifold Embedding: A Framework for Semi-Supervised and Unsupervised Dimension Reduction , 2010, IEEE Transactions on Image Processing.

[14]  Nicole Immorlica,et al.  Locality-sensitive hashing scheme based on p-stable distributions , 2004, SCG '04.

[15]  Quan-Sen Sun,et al.  Semi-paired hashing for cross-view retrieval , 2016, Neurocomputing.

[16]  Shih-Fu Chang,et al.  Semi-supervised hashing for scalable image retrieval , 2010, 2010 IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[17]  Minyi Guo,et al.  Supervised hashing with latent factor models , 2014, SIGIR.

[18]  Heng Tao Shen,et al.  Hashing for Similarity Search: A Survey , 2014, ArXiv.

[19]  Jianfei Cai,et al.  Semi-supervised manifold-embedded hashing with joint feature representation and classifier learning , 2017, Pattern Recognit..

[20]  Wei Liu,et al.  Discrete Graph Hashing , 2014, NIPS.