Mark AndersonM. Stella AtkinsJ. Vaisey
A new task-oriented image quality metric is used to quantify the effects of distortion introduced into magnetic resonance images by lossy compression. This metric measures the similarity between a radiologist's manual segmentation of pathological features in the original images and the automated segmentations performed on the original and compressed images. The images are compressed using a general wavelet-based lossy image compression technique, embedded zerotree coding, and segmented using a three-dimensional stochastic model-based tissue segmentation algorithm. The performance of the compression system is then enhanced by compressing different regions of the image volume at different bit rates, guided by prior knowledge about the location of important anatomical regions in the image. Application of the new system to magnetic resonance images is shown to produce compression results superior to the conventional methods, both subjectively and with respect to the segmentation similarity metric.
Yung ChenHeidi A. PetersonWalter Bender
Julià MinguillónJaume PujolJoan Serra-SagristàI. OrtuñoP. Guitart
Giordano B. BerettaVasudev BhaskaranΚωνσταντίνος ΚωνσταντινίδηςBalas R. Natarajan
James D. LeeJeffrey J. Rodrı́guez