Enhancing Uncertainty Estimation in Semantic Segmentation via Monte-Carlo Frequency Dropout
Journal:
arXiv
Published Date:
Jan 20, 2025
Abstract
Monte-Carlo (MC) Dropout provides a practical solution for estimating
predictive distributions in deterministic neural networks. Traditional dropout,
applied within the signal space, may fail to account for frequency-related
noise common in medical imaging, leading to biased predictive estimates. A
novel approach extends Dropout to the frequency domain, allowing stochastic
attenuation of signal frequencies during inference. This creates diverse global
textural variations in feature maps while preserving structural integrity -- a
factor we hypothesize and empirically show is contributing to accurately
estimating uncertainties in semantic segmentation. We evaluated traditional
MC-Dropout and the MC-frequency Dropout in three segmentation tasks involving
different imaging modalities: (i) prostate zones in biparametric MRI, (ii)
liver tumors in contrast-enhanced CT, and (iii) lungs in chest X-ray scans. Our
results show that MC-Frequency Dropout improves calibration, convergence, and
semantic uncertainty, thereby improving prediction scrutiny, boundary
delineation, and has the potential to enhance medical decision-making.