Rethinking Exemplars for Continual Semantic Segmentation in Endoscopy Scenes: Entropy-based Mini-Batch Pseudo-Replay
Guankun Wang, Long Bai, Yanan Wu, Tong Chen, Hongliang Ren

TL;DR
This paper introduces EndoCSS, a continual learning framework for endoscopic image segmentation that uses entropy-based mini-batch pseudo-replay and a self-adaptive loss to prevent catastrophic forgetting without storing old data.
Contribution
It proposes a novel privacy-preserving continual learning method combining generative pseudo-replay and adaptive loss for endoscopic segmentation tasks.
Findings
Effective in mitigating catastrophic forgetting in endoscopy scenes
Outperforms existing methods on public datasets
Shows potential for real-world streaming deployment
Abstract
Endoscopy is a widely used technique for the early detection of diseases or robotic-assisted minimally invasive surgery (RMIS). Numerous deep learning (DL)-based research works have been developed for automated diagnosis or processing of endoscopic view. However, existing DL models may suffer from catastrophic forgetting. When new target classes are introduced over time or cross institutions, the performance of old classes may suffer severe degradation. More seriously, data privacy and storage issues may lead to the unavailability of old data when updating the model. Therefore, it is necessary to develop a continual learning (CL) methodology to solve the problem of catastrophic forgetting in endoscopic image segmentation. To tackle this, we propose a Endoscopy Continual Semantic Segmentation (EndoCSS) framework that does not involve the storage and privacy issues of exemplar data. The…
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Taxonomy
TopicsColorectal Cancer Screening and Detection · Domain Adaptation and Few-Shot Learning · Congenital gastrointestinal and neural anomalies
