Alapfogalmak
This paper introduces MDAA, a novel method for Multi-Modal Continual Test-Time Adaptation (MM-CTTA) that effectively addresses challenges like error accumulation, catastrophic forgetting, and reliability bias in dynamically changing target domains with multi-modal corruption.
Statisztikák
MDAA outperforms previous methods by 3.00%-3.57% and 3.03%-6.22% on average for audio and video tasks in Kinetics50-C.
MDAA surpasses previous methods by 0.94%-1.10% and 0.13%-0.18% on average for audio and video tasks in VGGSound-C.
MDAA outperforms READ by 2.39%-6.84% and EATA by 0.60%-7.28% on average across Kinetics50-C and VGGSound-C in interleaved modality corruption tasks.