Four dimensional medical images, namely fMRI, require a large volume of memory to store the data. Compression techniques are therefore used for the storage and transmission of these medical images. This paper proposes a coding scheme for volumetric images which in the first stage recognizes significant images and in the second stage compresses those images using a JPEG-LS coding scheme. An example implementation for 4D fMRI data series of brain stored in ANALYZE file format is illustrated in this paper. The proposed scheme provides efficient compression for 4D fMRI medical images.
RiskinEALookkabaughTChouPA: Variable Rate Vector Quantization for Medical Image Compression. IEEE Transactions on Medical Imaging9: 290–298, 1990.
2.
PerlmutterSMCosmanPCTsengC-W: Medical Image Compression and Vector Quantization. Statistical Science13: 30–53, 1998.
3.
BaiXJinJSFengD: Segmentation Based Multilayer Diagnosis Lossless Medical Image Compression. ACM International Conference Proceeding Series: Proceedings of the Pan-Sydney area Workshop on Visual Information Processing100: 9–14, 2004.
4.
ChanC-SChangC-C: A Lossless Medical Image Compression Scheme Using Modified S-Tree Structure. 19th International Conference on Advanced Information Networking and Applications2: 75–78, 2005.
5.
LogeswaranREswaranC: Model-Based Compression for 3D Medical Images Stored in the DICOM Format. Journal of Medical Systems30: 133–138, 2006.
6.
ZagarMKovacMBosnicI: Lossless and Lossy Compression in 4D Bio-Modeling. Proceedings of CTA 2007: 271–276.
7.
KassimAAYanPLeeWS: Motion Compensated Lossy to Lossless Compression of 4D Medical Images using Integer Wavelet Transform. IEEE Transactions on Information Technology in Biomedicine9: 132–138, 2005.
8.
LiuYPearlmanWA: Four Dimensional Wavelet Compression of 4D Medical Images Using Scalable 4D SBHP. Proceedings of IEEE Data Compression Conference 2007: 233–242.
9.
SanchezVNasiopoulosPAbugharbiehR: Lossless Compression of 4D Medical Images using H.264/AVC. Proceedings of IEEE International Conference on Acoustics, Speech and Signal Processing2: 14–19, 2006.
10.
WeinbergerMJSeroussiGSapiroG: LOCO-I: A Low Complexity, Context-Based, Lossless Image Compression Algorithm'. Proceedings of Data Compression Conference, StorerJ., Editor, Los Alamitos, CA, IEEE Computer Society Press1996: 140–149.