Litcius/Paper detail

On the Robustness of Open-World Test-Time Training: Self-Training with Dynamic Prototype Expansion

Yushu Li, Xun Xu, Yongyi Su, Kui Jia

202316 citationsDOI

Abstract

Generalizing deep learning models to unknown target domain distribution with low latency has motivated research into test-time training/adaptation (TTT/TTA). Existing approaches often focus on improving test-time training performance under well-curated target domain data. As figured out in this work, many state-of-the-art methods fail to maintain the performance when the target domain is contaminated with strong out-of-distribution (OOD) data, a.k.a. open-world test-time training (OWTTT). The failure is mainly due to the inability to distinguish strong OOD samples from regular weak OOD samples. To improve the robustness of OWTTT we first develop an adaptive strong OOD pruning which improves the efficacy of the self-training TTT method. We further propose a way to dynamically expand the prototypes to represent strong OOD samples for an improved weak/strong OOD data separation. Finally, we regularize self-training with distribution alignment and the combination yields the state-of-the-art performance on 5 OWTTT benchmarks. The code is available at https://github.com/Yushu-Li/OWTTT.

Topics & Concepts

Robustness (evolution)Computer scienceTraining setArtificial intelligenceTest dataMachine learningDomain adaptationSoftware engineeringGeneBiochemistryChemistryDomain Adaptation and Few-Shot LearningAdvanced Neural Network ApplicationsMachine Learning and ELM