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[Author] Bian YANG(2hit)

1-2hit
  • Erasable Photograph Tagging: A Mobile Application Framework Employing Owner's Voice

    Zhenfei ZHAO  Hao LUO  Hua ZHONG  Bian YANG  Zhe-Ming LU  

     
    LETTER-Speech and Hearing

      Vol:
    E97-D No:2
      Page(s):
    370-372

    This letter proposes a mobile application framework named erasable photograph tagging (EPT) for photograph annotation and fast retrieval. The smartphone owner's voice is employed as tags and hidden in the host photograph without an extra feature database aided for retrieval. These digitized tags can be erased anytime with no distortion remaining in the recovered photograph.

  • Image Compression Algorithms Based on Side-Match Vector Quantizer with Gradient-Based Classifiers

    Zhe-Ming LU  Bian YANG  Sheng-He SUN  

     
    PAPER-Image Processing, Image Pattern Recognition

      Vol:
    E85-D No:9
      Page(s):
    1409-1415

    Vector quantization (VQ) is an attractive image compression technique. VQ utilizes the high correlation between neighboring pixels in a block, but disregards the high correlation between the adjacent blocks. Unlike VQ, side-match VQ (SMVQ) exploits codeword information of two encoded adjacent blocks, the upper and left blocks, to encode the current input vector. However, SMVQ is a fixed bit rate compression technique and doesn't make full use of the edge characteristics to predict the input vector. Classified side-match vector quantization (CSMVQ) is an effective image compression technique with low bit rate and relatively high reconstruction quality. It exploits a block classifier to decide which class the input vector belongs to using the variances of neighboring blocks' codewords. As an alternative, this paper proposes three algorithms using gradient values of neighboring blocks' codewords to predict the input block. The first one employs a basic gradient-based classifier that is similar to CSMVQ. To achieve lower bit rates, the second one exploits a refined two-level classifier structure. To reduce the encoding time further, the last one employs a more efficient classifier, in which adaptive class codebooks are defined within a gradient-ordered master codebook according to various prediction results. Experimental results prove the effectiveness of the proposed algorithms.