IVCVLGMar 10, 2022

Label-efficient Hybrid-supervised Learning for Medical Image Segmentation

arXiv:2203.05956v125 citationsh-index: 36
Originality Incremental advance
AI Analysis

This work addresses the challenge of limited expert annotations for medical image segmentation, offering an incremental improvement in label efficiency for domain-specific applications.

The paper tackles the problem of label-efficient medical image segmentation by addressing instance inconsistency in weakly-annotated data, proposing a hybrid-supervised framework that achieves competitive performance with only 10% strong labels compared to using 100% strong labels.

Due to the lack of expertise for medical image annotation, the investigation of label-efficient methodology for medical image segmentation becomes a heated topic. Recent progresses focus on the efficient utilization of weak annotations together with few strongly-annotated labels so as to achieve comparable segmentation performance in many unprofessional scenarios. However, these approaches only concentrate on the supervision inconsistency between strongly- and weakly-annotated instances but ignore the instance inconsistency inside the weakly-annotated instances, which inevitably leads to performance degradation. To address this problem, we propose a novel label-efficient hybrid-supervised framework, which considers each weakly-annotated instance individually and learns its weight guided by the gradient direction of the strongly-annotated instances, so that the high-quality prior in the strongly-annotated instances is better exploited and the weakly-annotated instances are depicted more precisely. Specially, our designed dynamic instance indicator (DII) realizes the above objectives, and is adapted to our dynamic co-regularization (DCR) framework further to alleviate the erroneous accumulation from distortions of weak annotations. Extensive experiments on two hybrid-supervised medical segmentation datasets demonstrate that with only 10% strong labels, the proposed framework can leverage the weak labels efficiently and achieve competitive performance against the 100% strong-label supervised scenario.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes