Towards Modality-agnostic Label-efficient Segmentation with Entropy-Regularized Distribution Alignment
Liyao Tang, Zhe Chen, Shanshan Zhao, Chaoyue Wang, Dacheng Tao

TL;DR
This paper introduces ERDA, a novel entropy-regularized distribution alignment strategy that improves label-efficient segmentation by reducing pseudo-label noise, applicable to both 2D and 3D data modalities.
Contribution
The paper proposes a modality-agnostic ERDA method that regularizes pseudo-labels using entropy and distribution alignment, enhancing segmentation performance with limited labels.
Findings
ERDA outperforms existing pseudo-labeling methods in 2D and 3D segmentation.
The approach effectively reduces pseudo-label noise and improves model training.
ERDA achieves state-of-the-art results on benchmark datasets.
Abstract
Label-efficient segmentation aims to perform effective segmentation on input data using only sparse and limited ground-truth labels for training. This topic is widely studied in 3D point cloud segmentation due to the difficulty of annotating point clouds densely, while it is also essential for cost-effective segmentation on 2D images. Until recently, pseudo-labels have been widely employed to facilitate training with limited ground-truth labels, and promising progress has been witnessed in both the 2D and 3D segmentation. However, existing pseudo-labeling approaches could suffer heavily from the noises and variations in unlabelled data, which would result in significant discrepancies between generated pseudo-labels and current model predictions during training. We analyze that this can further confuse and affect the model learning process, which shows to be a shared problem in…
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Taxonomy
TopicsHandwritten Text Recognition Techniques · Rough Sets and Fuzzy Logic · Text and Document Classification Technologies
MethodsEntropy Regularization
