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
September 29, 2024
September 16, 2024
August 22, 2024
July 11, 2024
July 8, 2024
July 1, 2024
May 31, 2024
May 22, 2024
April 2, 2024
March 22, 2024
February 29, 2024
January 1, 2024
December 12, 2023
December 5, 2023
November 29, 2023
October 23, 2023
October 9, 2023
September 14, 2023