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
More to Less (M2L): Enhanced Health Recognition in the Wild with Reduced Modality of Wearable Sensors
Huiyuan Yang, Han Yu, Kusha Sridhar, Thomas Vaessen, Inez Myin-Germeys, Akane Sano
360 Depth Estimation in the Wild -- The Depth360 Dataset and the SegFuse Network
Qi Feng, Hubert P. H. Shum, Shigeo Morishima
Application of deep learning to camera trap data for ecologists in planning / engineering -- Can captivity imagery train a model which generalises to the wild?
Ryan Curry, Cameron Trotter, Andrew Stephen McGough
Online Adaptation for Implicit Object Tracking and Shape Reconstruction in the Wild
Jianglong Ye, Yuntao Chen, Naiyan Wang, Xiaolong Wang