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[Keyword] content-based image retrieval (CBIR)(3hit)

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  • Privacy-Enhanced Similarity Search Scheme for Cloud Image Databases

    Hao LIU  Hideaki GOTO  

     
    LETTER-Information Network

      Pubricized:
    2016/09/12
      Vol:
    E99-D No:12
      Page(s):
    3188-3191

    The privacy of users' data has become a big issue for cloud service. This research focuses on image cloud database and the function of similarity search. To enhance security for such database, we propose a framework of privacy-enhanced search scheme, while all the images in the database are encrypted, and similarity image search is still supported.

  • Color Image Retrieval Based on Distance-Weighted Boundary Predictive Vector Quantization Index Histograms

    Zhen SUN  Zhe-Ming LU  Hao LUO  

     
    LETTER-Image Processing and Video Processing

      Vol:
    E92-D No:9
      Page(s):
    1803-1806

    This Letter proposes a new kind of features for color image retrieval based on Distance-weighted Boundary Predictive Vector Quantization (DWBPVQ) Index Histograms. For each color image in the database, 6 histograms (2 for each color component) are calculated from the six corresponding DWBPVQ index sequences. The retrieval simulation results show that, compared with the traditional Spatial-domain Color-Histogram-based (SCH) features and the DCTVQ index histogram-based (DCTVQIH) features, the proposed DWBPVQIH features can greatly improve the recall and precision performance.

  • Image Retrieval by Edge Features Using Higher Order Autocorrelation in a SOM Environment

    Masaaki KUBO  Zaher AGHBARI  Kun Seok OH  Akifumi MAKINOUCHI  

     
    PAPER-Image Processing, Image Pattern Recognition

      Vol:
    E86-D No:8
      Page(s):
    1406-1415

    This paper proposes a technique for indexing, clustering and retrieving images based on their edge features. In this technique, images are decomposed into several frequency bands using the Haar wavelet transform. From the one-level decomposition sub-bands an edge image is formed. Next, the higher order auto-correlation function is applied on the edge image to extract the edge features. These higher order autocorrelation features are normalized to generate a compact feature vector, which is invariant to shift, image size. We used direction cosine as measure of distance not to be influenced by difference of each image's luminance. Then, these feature vectors are clustered by a self-organizing map (SOM) based on their edge feature similarity. The performed experiments show higher precision and recall of this technique than traditional ways in clustering and retrieving images in a large image database environment.