Wild Challenge
"Wild" in machine learning research refers to the challenge of applying models trained on curated datasets to real-world, unstructured data, characterized by noise, variability, and ambiguity. Current research focuses on adapting existing models (like NeRFs, transformers, and convolutional networks) and developing new architectures to handle this complexity, often incorporating techniques like contrastive learning, multimodal fusion, and test-time adaptation. This research is crucial for bridging the gap between laboratory settings and practical applications, improving the robustness and reliability of AI systems in diverse and unpredictable environments. The ultimate goal is to create more generalizable and robust AI systems capable of functioning effectively in the real world.
Papers
Few-Shot Head Swapping in the Wild
Changyong Shu, Hemao Wu, Hang Zhou, Jiaming Liu, Zhibin Hong, Changxing Ding, Junyu Han, Jingtuo Liu, Errui Ding, Jingdong Wang
The MeVer DeepFake Detection Service: Lessons Learnt from Developing and Deploying in the Wild
Spyridon Baxevanakis, Giorgos Kordopatis-Zilos, Panagiotis Galopoulos, Lazaros Apostolidis, Killian Levacher, Ipek B. Schlicht, Denis Teyssou, Ioannis Kompatsiaris, Symeon Papadopoulos
Gaze-based Object Detection in the Wild
Daniel Weber, Wolfgang Fuhl, Andreas Zell, Enkelejda Kasneci
Earnings-22: A Practical Benchmark for Accents in the Wild
Miguel Del Rio, Peter Ha, Quinten McNamara, Corey Miller, Shipra Chandra
Dressing in the Wild by Watching Dance Videos
Xin Dong, Fuwei Zhao, Zhenyu Xie, Xijin Zhang, Daniel K. Du, Min Zheng, Xiang Long, Xiaodan Liang, Jianchao Yang