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
Model Counting in the Wild
Arijit Shaw, Kuldeep S. Meel
NeRF-US: Removing Ultrasound Imaging Artifacts from Neural Radiance Fields in the Wild
Rishit Dagli, Atsuhiro Hibi, Rahul G. Krishnan, Pascal N. Tyrrell
GLGait: A Global-Local Temporal Receptive Field Network for Gait Recognition in the Wild
Guozhen Peng, Yunhong Wang, Yuwei Zhao, Shaoxiong Zhang, Annan Li
ChartGemma: Visual Instruction-tuning for Chart Reasoning in the Wild
Ahmed Masry, Megh Thakkar, Aayush Bajaj, Aaryaman Kartha, Enamul Hoque, Shafiq Joty
Functional Faithfulness in the Wild: Circuit Discovery with Differentiable Computation Graph Pruning
Lei Yu, Jingcheng Niu, Zining Zhu, Gerald Penn
WildDESED: An LLM-Powered Dataset for Wild Domestic Environment Sound Event Detection System
Yang Xiao, Rohan Kumar Das