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Four-Dimensional Wavelet Compression of 4-D Medical Images Using Scalable 4-D SBHP
Snowbird, Utah March 27-March 29
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/DCC.2007.392007 Data Compression Conference (DCC ...
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Ying Liu, Rensselaer Polytechnic Institute, Troy, NY
William A. Pearlman, Rensselaer Polytechnic Institute, Troy, NY
This paper proposes a low-complexity wavelet-based method for progressive lossy-tolossless compression of four dimensional (4-D) medical images. The Subband Block Hierarchial Partitioning (SBHP) algorithm is modified and extended to four dimensions, and applied to every code block independently. The resultant algorithm, 4D-SBHP, efficiently encodes 4D image data by the exploitation of the dependencies in all dimensions, while enabling progressive SNR and resolution decompression. The resolution scalable and lossy-to-lossless performances are empirically investigated. The experimental results show that our 4-D scheme achieves better compression performance on 4-D medical images when compared with 3-D volumetric compression schemes.
Citation:
Ying Liu, William A. Pearlman, "Four-Dimensional Wavelet Compression of 4-D Medical Images Using Scalable 4-D SBHP," dcc, pp.233-242, 2007 Data Compression Conference (DCC'07), 2007
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