Parameter choices in HaarPSI for IQA with medical images
When developing machine learning models, image quality assessment (IQA) measures are a crucial component for evaluation. However, commonly used IQA measures have been primarily developed and optimized for natural images. In many specialized settings, such as medical images, this poses an often-overl...
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Zusammenfassung: | When developing machine learning models, image quality assessment (IQA)
measures are a crucial component for evaluation. However, commonly used IQA
measures have been primarily developed and optimized for natural images. In
many specialized settings, such as medical images, this poses an
often-overlooked problem regarding suitability. In previous studies, the IQA
measure HaarPSI showed promising behavior for natural and medical images.
HaarPSI is based on Haar wavelet representations and the framework allows
optimization of two parameters. So far, these parameters have been aligned for
natural images. Here, we optimize these parameters for two annotated medical
data sets, a photoacoustic and a chest X-Ray data set. We observe that they are
more sensitive to the parameter choices than the employed natural images, and
on the other hand both medical data sets lead to similar parameter values when
optimized. We denote the optimized setting, which improves the performance for
the medical images notably, by HaarPSI$_{MED}$. The results suggest that
adapting common IQA measures within their frameworks for medical images can
provide a valuable, generalizable addition to the employment of more specific
task-based measures. |
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DOI: | 10.48550/arxiv.2410.24098 |