Semi Supervised
Semi-supervised learning aims to train machine learning models using both labeled and unlabeled data, addressing the scarcity of labeled data which is a common bottleneck in many applications. Current research focuses on improving the quality of pseudo-labels generated from unlabeled data, often employing techniques like contrastive learning, knowledge distillation, and mean teacher models within various architectures including variational autoencoders, transformers, and graph neural networks. This approach is proving valuable across diverse fields, enhancing model performance in areas such as medical image analysis, object detection, and environmental sound classification where acquiring large labeled datasets is expensive or impractical.
Papers
DiverseNet: Decision Diversified Semi-supervised Semantic Segmentation Networks for Remote Sensing Imagery
Wanli Ma, Oktay Karakus, Paul L. Rosin
Robust Errant Beam Prognostics with Conditional Modeling for Particle Accelerators
Kishansingh Rajput, Malachi Schram, Willem Blokland, Yasir Alanazi, Pradeep Ramuhalli, Alexander Zhukov, Charles Peters, Ricardo Vilalta
Pseudo Label-Guided Data Fusion and Output Consistency for Semi-Supervised Medical Image Segmentation
Tao Wang, Yuanbin Chen, Xinlin Zhang, Yuanbo Zhou, Junlin Lan, Bizhe Bai, Tao Tan, Min Du, Qinquan Gao, Tong Tong
Shifting to Machine Supervision: Annotation-Efficient Semi and Self-Supervised Learning for Automatic Medical Image Segmentation and Classification
Pranav Singh, Raviteja Chukkapalli, Shravan Chaudhari, Luoyao Chen, Mei Chen, Jinqian Pan, Craig Smuda, Jacopo Cirrone
SSASS: Semi-Supervised Approach for Stenosis Segmentation
In Kyu Lee, Junsup Shin, Yong-Hee Lee, Jonghoe Ku, Hyun-Woo Kim