Test Time Augmentation
Test-time augmentation (TTA) enhances the robustness and accuracy of machine learning models by applying data augmentations during the testing phase, rather than only during training. Current research focuses on optimizing augmentation strategies, including intelligent selection of augmentations based on uncertainty metrics and the use of generative models to create more diverse and relevant augmented views. This technique improves model performance across various domains, from image classification and segmentation to natural language processing and medical image analysis, leading to more reliable and robust predictions in real-world applications. The development of uncertainty-aware methods and the exploration of TTA in conjunction with ensemble methods and active learning are particularly active areas of investigation.
Papers
BayTTA: Uncertainty-aware medical image classification with optimized test-time augmentation using Bayesian model averaging
Zeinab Sherkatghanad, Moloud Abdar, Mohammadreza Bakhtyari, Pawel Plawiak, Vladimir Makarenkov
Test-Time Generative Augmentation for Medical Image Segmentation
Xiao Ma, Yuhui Tao, Yuhan Zhang, Zexuan Ji, Yizhe Zhang, Qiang Chen