Test Time Adaptation
Test-time adaptation (TTA) focuses on improving the performance of pre-trained machine learning models on unseen data during inference, without requiring additional labeled training data. Current research emphasizes developing robust TTA methods across diverse tasks, including image classification, segmentation, object detection, and speech recognition, often employing techniques like batch normalization updates, pseudo-labeling, and adversarial training within various model architectures (e.g., transformers, neural implicit representations). The ability to adapt models efficiently at test time is crucial for deploying machine learning systems in real-world scenarios characterized by domain shifts and data variability, impacting fields ranging from medical imaging to robotics.
Papers
Calibration-free online test-time adaptation for electroencephalography motor imagery decoding
Martin Wimpff, Mario Döbler, Bin Yang
Each Test Image Deserves A Specific Prompt: Continual Test-Time Adaptation for 2D Medical Image Segmentation
Ziyang Chen, Yongsheng Pan, Yiwen Ye, Mengkang Lu, Yong Xia
Persistent Test-time Adaptation in Recurring Testing Scenarios
Trung-Hieu Hoang, Duc Minh Vo, Minh N. Do