Using binarization and hashing for efficient SIFT matching

We proposed a scheme to fast retrieval similar images.SIFT features are converted to binary strings to shorten the time needed for feature matching.A fast retrieval method using hash technique is proposed.The proposed scheme possesses corresponding distinguishing ability as compared to the original SIFT method. The well-known SIFT is capable of extracting distinctive features for image retrieval. However, its matching is time consuming and slows down the entire process. In the SIFT matching, the Euclidean distance is used to measure the similarity of two features, which is expensive because it involves taking square root. Moreover, the scale of the image database is usually too large to adopt linear search for image retrieval. To improve the SIFT matching, this paper proposes a fast image retrieval scheme transforms the SIFT features to binary representations. The complexity of the distance calculation is reduced to bit-wise operation and the retrieval time is greatly decreased. Moreover, the proposed scheme utilizes hashing for retrieving similar images according to the binarized features and further speeds up the retrieval process. The experiment results show the proposed scheme can retrieve images efficiently with only a little sacrifice of accuracy as compared to SIFT.

[1]  Yutaka Usui,et al.  The SIFT image feature reduction method using the Histogram Intersection Kernel , 2009, 2009 International Symposium on Intelligent Signal Processing and Communication Systems (ISPACS).

[2]  Zhen-Sheng Ni B-SIFT: A Binary SIFT Based Local Image Feature Descriptor , 2012 .

[3]  Xudong Jiang,et al.  Feature extraction for image recognition and computer vision , 2009, 2009 2nd IEEE International Conference on Computer Science and Information Technology.

[4]  Yan Ke,et al.  PCA-SIFT: a more distinctive representation for local image descriptors , 2004, CVPR 2004.

[5]  Anil K. Jain,et al.  Robust Keypoint Detection Using Higher-Order Scale Space Derivatives: Application to Image Retrieval , 2014, IEEE Signal Processing Letters.

[6]  Daixian Zhu,et al.  A Method of Improving SIFT Algorithm Matching Efficiency , 2009, 2009 2nd International Congress on Image and Signal Processing.

[7]  Xin Yang,et al.  Local Difference Binary for Ultrafast and Distinctive Feature Description , 2014, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[8]  M. S. Madankar,et al.  Exposing Digital Image Forgeries from Near Duplicate Images , 2014, 2014 Fourth International Conference on Communication Systems and Network Technologies.

[9]  Wang Rongbo,et al.  Copy image detection based on local keypoints , 2011, 2011 International Conference of Soft Computing and Pattern Recognition (SoCPaR).

[10]  Z. Jane Wang,et al.  Perceptual Image Hashing Based on Shape Contexts and Local Feature Points , 2012, IEEE Transactions on Information Forensics and Security.

[11]  Xingming Wu,et al.  Dimension reduction based SPM for image classification , 2013, 2013 25th Chinese Control and Decision Conference (CCDC).

[12]  A. Tashk,et al.  Age and gender estimation by using hybrid facial features , 2012, 2012 20th Telecommunications Forum (TELFOR).

[13]  Alexandre Alahi,et al.  From Bits to Images: Inversion of Local Binary Descriptors , 2012, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[14]  Y. Wang,et al.  Large-scale paralleled sparse principal component analysis , 2014, Multimedia Tools and Applications.

[15]  Qi Tian,et al.  Contextual Hashing for Large-Scale Image Search , 2014, IEEE Transactions on Image Processing.

[16]  David G. Lowe,et al.  Distinctive Image Features from Scale-Invariant Keypoints , 2004, International Journal of Computer Vision.

[17]  Jun Yu,et al.  Exploiting Click Constraints and Multi-view Features for Image Re-ranking , 2014, IEEE Transactions on Multimedia.

[18]  S. Govindarajulu,et al.  A Comparison of SIFT, PCA-SIFT and SURF , 2012 .

[19]  Fariborz Mahmoudi,et al.  Key point reduction in SIFT descriptor used by subtractive clustering , 2012, 2012 11th International Conference on Information Science, Signal Processing and their Applications (ISSPA).

[20]  Y. Rui,et al.  Learning to Rank Using User Clicks and Visual Features for Image Retrieval , 2015, IEEE Transactions on Cybernetics.

[21]  Changyin Sun,et al.  An Efficient Approach to Web Near-Duplicate Image Detection , 2013, 2013 2nd IAPR Asian Conference on Pattern Recognition.

[22]  Geoff Wyvill,et al.  SIFT and SURF Performance Evaluation against Various Image Deformations on Benchmark Dataset , 2011, 2011 International Conference on Digital Image Computing: Techniques and Applications.

[23]  Jie Zhao,et al.  Optimization matching algorithm based on improved Harris and SIFT , 2010, 2010 International Conference on Machine Learning and Cybernetics.

[24]  Jun Yu,et al.  Click Prediction for Web Image Reranking Using Multimodal Sparse Coding , 2014, IEEE Transactions on Image Processing.

[25]  Weifeng Liu,et al.  Multiview Hessian Regularization for Image Annotation , 2013, IEEE Transactions on Image Processing.

[26]  Shawn D. Newsam,et al.  Geographic Image Retrieval Using Local Invariant Features , 2013, IEEE Transactions on Geoscience and Remote Sensing.