Framework for 4D Medical Data Compression (CROSBI ID 183323)
Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija
Podaci o odgovornosti
Žagar, Martin ; Kovač, Mario ; Hofman, Daniel
engleski
Framework for 4D Medical Data Compression
This work presents a novel framework for four-dimensional (4D) medical data compression architecture. This framework is based on different procedures and algorithms that detect time and spatial (frequncy) redundancy in recorded 4D medical data. Motion in time is analyzed through the motion fields that produce input parameters for the neural network used for motion estimation. Combination of segmentation, block matching and motion field prediction along with expert knowledge are incorporated to achieve better performance. Frequency analysis is done through an extension of one dimensional wavelet transformation to three dimensions. For still volume objects different wavelet packets with different filter banks can be constructed, providing a wide range of frequency analysis. With combination of removing temporal and spatial redundancies, very high compression ratio is achieved.
3D wavelet transformation; 4D medical data; block matching; motion field; temporal and frequency redundancies
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Podaci o izdanju
19 (1)
2012.
99-106
objavljeno
1330-3651