Time Adaptation
Test-time adaptation (TTA) focuses on improving the performance of pre-trained models when encountering unforeseen data distributions during deployment, without requiring retraining or access to the original training data. Current research emphasizes developing robust TTA methods that address challenges like noisy data, dynamic domain shifts, and computational constraints, often employing techniques such as entropy minimization, diffusion models, and active learning to guide the adaptation process. These advancements are significant because they enhance the real-world applicability of machine learning models, particularly in scenarios with limited data or rapidly changing environments, such as robotics and medical image analysis.
Papers
October 20, 2024
October 18, 2024
October 12, 2024
September 14, 2024
August 11, 2024
June 15, 2024
June 6, 2024
May 29, 2024
May 28, 2024
May 14, 2024
March 16, 2024
March 12, 2024
March 4, 2024
January 26, 2024
November 30, 2023
October 16, 2023
October 9, 2023
October 3, 2023
April 25, 2023
April 10, 2023