Harnessing Group-Oriented Consistency Constraints for Semi-Supervised Semantic Segmentation in CdZnTe Semiconductors
Peihao Li, Yan Fang, Man Liu, Huihui Bai, Anhong Wang, Yunchao Wei, Yao Zhao

TL;DR
This paper introduces a group-oriented semi-supervised segmentation framework for CdZnTe semiconductor images, leveraging intra-group consistency constraints to improve boundary detection with minimal labeled data.
Contribution
It proposes the Intra-group Consistency Augmentation Framework (ICAF), including the Pseudo-label Correction Network (PCN), to effectively utilize group relationships and enhance segmentation accuracy.
Findings
Achieves 70.6% mIoU with only 2 group-annotated samples
Validates the effectiveness of intra-group consistency constraints
Demonstrates improved boundary detail synthesis
Abstract
Labeling Cadmium Zinc Telluride (CdZnTe) semiconductor images is challenging due to the low-contrast defect boundaries, necessitating annotators to cross-reference multiple views. These views share a single ground truth (GT), forming a unique ``many-to-one'' relationship. This characteristic renders advanced semi-supervised semantic segmentation (SSS) methods suboptimal, as they are generally limited by a ``one-to-one'' relationship, where each image is independently associated with its GT. Such limitation may lead to error accumulation in low-contrast regions, further exacerbating confirmation bias. To address this issue, we revisit the SSS pipeline from a group-oriented perspective and propose a human-inspired solution: the Intra-group Consistency Augmentation Framework (ICAF). First, we experimentally validate the inherent consistency constraints within CdZnTe groups, establishing a…
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Taxonomy
TopicsAdvanced Semiconductor Detectors and Materials · Industrial Vision Systems and Defect Detection · Machine Learning in Materials Science
