TY - JOUR
T1 - Test-Time Adaptation in the Dynamic World With Compound Domain Knowledge Management
AU - Song, Junha
AU - Park, Kwanyong
AU - Shin, In Kyu
AU - Woo, Sanghyun
AU - Zhang, Chaoning
AU - Kweon, In So
N1 - Publisher Copyright:
© 2016 IEEE.
PY - 2023/11/1
Y1 - 2023/11/1
N2 - Prior to the deployment of robotic systems, pre-training the deep-recognition models on all potential visual cases is infeasible in practice. Hence, test-time adaptation (TTA) allows the model to adapt itself to novel environments and improve its performance during test time (i.e., lifelong adaptation). Several works for TTA have shown promising adaptation performances in continuously changing environments. However, our investigation reveals that existing methods are vulnerable to dynamic distributional changes and often lead to overfitting of TTA models. To address this problem, this letter first presents a robust TTA framework with compound domain knowledge management. Our framework helps the TTA model to harvest the knowledge of multiple representative domains (i.e., compound domain) and conduct the TTA based on the compound domain knowledge. In addition, to prevent overfitting of the TTA model, we devise novel regularization which modulates the adaptation rates using domain-similarity between the source and the current target domain. With the synergy of the proposed framework and regularization, we achieve consistent performance improvements in diverse TTA scenarios, especially on dynamic domain shifts. We demonstrate the generality of proposals via extensive experiments including image classification on ImageNet-C and semantic segmentation on GTA5, C-driving, and Cityscapes datasets.
AB - Prior to the deployment of robotic systems, pre-training the deep-recognition models on all potential visual cases is infeasible in practice. Hence, test-time adaptation (TTA) allows the model to adapt itself to novel environments and improve its performance during test time (i.e., lifelong adaptation). Several works for TTA have shown promising adaptation performances in continuously changing environments. However, our investigation reveals that existing methods are vulnerable to dynamic distributional changes and often lead to overfitting of TTA models. To address this problem, this letter first presents a robust TTA framework with compound domain knowledge management. Our framework helps the TTA model to harvest the knowledge of multiple representative domains (i.e., compound domain) and conduct the TTA based on the compound domain knowledge. In addition, to prevent overfitting of the TTA model, we devise novel regularization which modulates the adaptation rates using domain-similarity between the source and the current target domain. With the synergy of the proposed framework and regularization, we achieve consistent performance improvements in diverse TTA scenarios, especially on dynamic domain shifts. We demonstrate the generality of proposals via extensive experiments including image classification on ImageNet-C and semantic segmentation on GTA5, C-driving, and Cityscapes datasets.
KW - computer vision for transportation
KW - Continual learning
KW - deep learning for visual perception
UR - http://www.scopus.com/inward/record.url?scp=85168743629&partnerID=8YFLogxK
U2 - 10.1109/LRA.2023.3308063
DO - 10.1109/LRA.2023.3308063
M3 - Article
AN - SCOPUS:85168743629
SN - 2377-3766
VL - 8
SP - 7583
EP - 7590
JO - IEEE Robotics and Automation Letters
JF - IEEE Robotics and Automation Letters
IS - 11
ER -