Modern applications of computer vision demand robustness across scenarios as well as social acceptability. For example, object detection must work across daytime and low-light conditions, or face recognition should produce accurate outputs across ethnicities. To deal with such scenarios, we develop universal representation learning methods that go beyond the limitations of expensive and high-quality labeled data, to utilize large-scale and diverse unlabeled data. Our techniques from unsupervised and semi-supervised learning, such as domain adaptation and domain generalization, allow robust and responsible AI solutions across multiple applications such as image classification, face recognition, facial anti-spoofing, object detection and semantic segmentation.
Team Members: Yumin Suh, Samuel Schulter, Sparsh Garg, Turgun Kashgari