Semi Supervised Object Detection
Semi-supervised object detection (SSOD) aims to improve object detection models by leveraging both labeled and unlabeled data, reducing the reliance on expensive manual annotation. Current research focuses on refining pseudo-labeling techniques to mitigate noise and class imbalance, often employing teacher-student frameworks with various architectures, including CNNs and transformers, and exploring strategies like consistency regularization and active learning. These advancements are significant because they enable the training of high-performing object detectors with substantially less labeled data, impacting fields like medical imaging, remote sensing, and autonomous driving.
Papers
Low-Confidence Samples Mining for Semi-supervised Object Detection
Guandu Liu, Fangyuan Zhang, Tianxiang Pan, Bin Wang
Pseudo-Labeling Enhanced by Privileged Information and Its Application to In Situ Sequencing Images
Marzieh Haghighi, Mario C. Cruz, Erin Weisbart, Beth A. Cimini, Avtar Singh, Julia Bauman, Maria E. Lozada, Sanam L. Kavari, James T. Neal, Paul C. Blainey, Anne E. Carpenter, Shantanu Singh