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The resolution at which medical images are displayed on output devices often differs from the original. Image rescaling
is accomplished by estimating pixels at unknown locations through interpolation. The most common artifacts resulting
from this estimation include blurring, edge distortion, ringing and aliasing. Even for the same image, different interpolation
techniques may produce images that differ significantly. As a result, interpolation may have an impact on diagnostic image
quality. Objective quality assessment of interpolated images is a challenging task since there is no one-to-one mapping between
the original and the interpolated image. No objective model has been yet established for medical images. A quantitative
evaluation of the impact of interpolation on medical image quality with the use of the most common interpolation techniques
is presented. The quality of 60 interpolated compressed and uncompressed neuro- and abdominal CT images was evaluated
objectively using the mean squared error (MSE), signal-to-noise ratio (SNR), structural similarity index (SSIM) and a proposed
technique based on the deterministic and statistical information of the signal. This work is an attempt to capture the loss of
diagnostic information of interpolated compressed and uncompressed medical images. We propose a full-reference objective
measure of quality for interpolated images, which considers deterministic and statistical knowledge about the image. The
statistical properties are acquired from the frequency domain (high-frequency content) of the signal and are combined with the
elements of SSIM. Future work will involve validation of the proposed image fidelity measure based on subjective radiological
assessments using a modified Receiver Operating Characteristic (ROC) analysis. We aim to present a model that could serve
as a predictor of quality of interpolated images at different rescaling factors for a given image modality and anatomical region.
Biography
Ilona Kowalik-Urbaniak has completed her PhD in 2015 at the University of Waterloo in Applied Mathematics. Currently, she holds a Postdoctoral research position (TalentEdge Postdoctoral Fellowship) at Client Outlook Inc., Waterloo, Ontario. Her work is mainly focused in the area of quality assessment of compressed medical images and the effects of image compression on diagnosis. Her PhD dissertation dealt with mathematical modeling of subjective radiologists’ responses using objective image quality assessment methods. She has been awarded for her work on medical image quality at conferences on several occasions.