Robust Version
Robustness in machine learning models is a crucial area of research focusing on improving the reliability and resilience of models against various forms of uncertainty, including noisy data, adversarial attacks, and environmental variations. Current research emphasizes developing novel algorithms and architectures, such as transformers, to enhance model performance under these challenging conditions, often incorporating techniques like knowledge distillation, data augmentation, and robust optimization. This work is significant because it directly addresses the limitations of existing models, leading to more reliable and trustworthy AI systems across diverse applications, from medical imaging and autonomous navigation to natural language processing and personalized pricing.
Papers
Robust and Explainable Fine-Grained Visual Classification with Transfer Learning: A Dual-Carriageway Framework
Zheming Zuo, Joseph Smith, Jonathan Stonehouse, Boguslaw Obara
MAD-ICP: It Is All About Matching Data -- Robust and Informed LiDAR Odometry
Simone Ferrari, Luca Di Giammarino, Leonardo Brizi, Giorgio Grisetti
A Robust eLORETA Technique for Localization of Brain Sources in the Presence of Forward Model Uncertainties
A. Noroozi, M. Ravan, B. Razavi, R. S. Fisher, Y. Law, M. S. Hasan
StableMoFusion: Towards Robust and Efficient Diffusion-based Motion Generation Framework
Yiheng Huang, Hui Yang, Chuanchen Luo, Yuxi Wang, Shibiao Xu, Zhaoxiang Zhang, Man Zhang, Junran Peng
DVF: Advancing Robust and Accurate Fine-Grained Image Retrieval with Retrieval Guidelines
Xin Jiang, Hao Tang, Rui Yan, Jinhui Tang, Zechao Li
SPARO: Selective Attention for Robust and Compositional Transformer Encodings for Vision
Ankit Vani, Bac Nguyen, Samuel Lavoie, Ranjay Krishna, Aaron Courville
HDBN: A Novel Hybrid Dual-branch Network for Robust Skeleton-based Action Recognition
Jinfu Liu, Baiqiao Yin, Jiaying Lin, Jiajun Wen, Yue Li, Mengyuan Liu