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[Keyword] ROI coding(2hit)

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  • An Efficient Wavelet-Based ROI Coding for Multiple Regions

    Kazuma SHINODA  Naoki KOBAYASHI  Ayako KATOH  Hideki KOMAGATA  Masahiro ISHIKAWA  Yuri MURAKAMI  Masahiro YAMAGUCHI  Tokiya ABE  Akinori HASHIGUCHI  Michiie SAKAMOTO  

     
    PAPER-Image

      Vol:
    E98-A No:4
      Page(s):
    1006-1020

    Region of interest (ROI) coding is a useful function for many applications. JPEG2000 supports ROI coding and can decode ROIs preferentially regardless of the shape and number of the regions. However, if the number of regions is quite large, the ROI coding performance of JPEG2000 declines because the code-stream includes many useless non-ROI codes. This paper proposes a wavelet-based ROI coding method suited for multiple ROIs. The proposed wavelet transform does not access any non-ROIs when transforming the ROIs. Additionally, the proposed method eliminates the need for unnecessary coding of the bits in the higher bit planes of non-ROI regions by adding an ROI map to the code-stream. The experimental results show that the proposed method achieves a higher peak signal-to-noise ratio than the ROI coding of JPEG2000. The proposed method can be applied to both max-shift and scaling-based ROI coding.

  • Switching Wavelet Transform for ROI Image Coding

    Shinji FUKUMA  Toshihiko TANAKA  Masahiko NAWATE  

     
    PAPER-Image

      Vol:
    E88-A No:7
      Page(s):
    1995-2006

    In region-of-interest (ROI) image coding based on wavelet transforms, the tap length of the wavelet filter as well as energy compaction characteristics affect the quality of the restored image. This paper presents a wavelet transform comprised of two wavelet filter sets with different tap lengths. The wavelet filter is switched to the shorter-length set to code a ROI of an image and to the longer-length one for the remaining region, the region of non-interest (RONI). ROI coding examples demonstrate that this switching wavelet transform provides better quality levels than fixed transforms under the same total bits; the quality of the recovered ROI is improved in the lossy coding of both regions while that of the full image is improved in the lossless coding of the ROI.