GAUDA: Generative Adaptive Uncertainty-guided Diffusion-based Augmentation for Surgical Segmentation
Journal:
arXiv
Published Date:
Jan 18, 2025
Abstract
Augmentation by generative modelling yields a promising alternative to the
accumulation of surgical data, where ethical, organisational and regulatory
aspects must be considered. Yet, the joint synthesis of (image, mask) pairs for
segmentation, a major application in surgery, is rather unexplored. We propose
to learn semantically comprehensive yet compact latent representations of the
(image, mask) space, which we jointly model with a Latent Diffusion Model. We
show that our approach can effectively synthesise unseen high-quality paired
segmentation data of remarkable semantic coherence. Generative augmentation is
typically applied pre-training by synthesising a fixed number of additional
training samples to improve downstream task models. To enhance this approach,
we further propose Generative Adaptive Uncertainty-guided Diffusion-based
Augmentation (GAUDA), leveraging the epistemic uncertainty of a Bayesian
downstream model for targeted online synthesis. We condition the generative
model on classes with high estimated uncertainty during training to produce
additional unseen samples for these classes. By adaptively utilising the
generative model online, we can minimise the number of additional training
samples and centre them around the currently most uncertain parts of the data
distribution. GAUDA effectively improves downstream segmentation results over
comparable methods by an average absolute IoU of 1.6% on CaDISv2 and 1.5% on
CholecSeg8k, two prominent surgical datasets for semantic segmentation.