Litcius/Paper detail

ActMAD: Activation Matching to Align Distributions for Test-Time-Training

M. Jehanzeb Mirza, Pol Jané Soneira, Wei Lin, Mateusz Koziński, Horst Possegger, Horst Bischof

202316 citationsDOI

Abstract

Test-Time-Training (TTT) is an approach to cope with out-of-distribution (OOD) data by adapting a trained model to distribution shifts occurring at test-time. We propose to perform this adaptation via Activation Matching (ActMAD): We analyze activations of the model and align activation statistics of the OOD test data to those of the training data. In contrast to existing methods, which model the distribution of entire channels in the ultimate layer of the feature extractor, we model the distribution of each feature in multiple layers across the network. This results in a more fine-grained supervision and makes ActMAD attain state of the art performance on CIFAR-100C and Imagenet-C. ActMAD is also architecture-and task-agnostic, which lets us go beyond image classification, and score 15.4% improvement over previous approaches when evaluating a KITTI-trained object detector on KITTI-Fog. Our experiments highlight that ActMAD can be applied to online adaptation in realistic scenarios, requiring little data to attain its full performance.

Topics & Concepts

Computer scienceAdaptation (eye)Matching (statistics)Feature (linguistics)ExtractorArtificial intelligenceTest dataTask (project management)Feature extractionTraining setMachine learningLayer (electronics)Object detectionPattern recognition (psychology)EngineeringSoftware engineeringPhysicsOrganic chemistrySystems engineeringProcess engineeringStatisticsPhilosophyMathematicsLinguisticsChemistryOpticsDomain Adaptation and Few-Shot LearningAdvanced Neural Network ApplicationsMultimodal Machine Learning Applications