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
BaboonLand Dataset: Tracking Primates in the Wild and Automating Behaviour Recognition from Drone Videos
Isla Duporge, Maksim Kholiavchenko, Roi Harel, Scott Wolf, Dan Rubenstein, Meg Crofoot, Tanya Berger-Wolf, Stephen Lee, Julie Barreau, Jenna Kline, Michelle Ramirez, Charles Stewart
CoCoGesture: Toward Coherent Co-speech 3D Gesture Generation in the Wild
Xingqun Qi, Hengyuan Zhang, Yatian Wang, Jiahao Pan, Chen Liu, Peng Li, Xiaowei Chi, Mengfei Li, Qixun Zhang, Wei Xue, Shanghang Zhang, Wenhan Luo, Qifeng Liu, Yike Guo
RPBG: Towards Robust Neural Point-based Graphics in the Wild
Qingtian Zhu, Zizhuang Wei, Zhongtian Zheng, Yifan Zhan, Zhuyu Yao, Jiawang Zhang, Kejian Wu, Yinqiang Zheng
LMVD: A Large-Scale Multimodal Vlog Dataset for Depression Detection in the Wild
Lang He, Kai Chen, Junnan Zhao, Yimeng Wang, Ercheng Pei, Haifeng Chen, Jiewei Jiang, Shiqing Zhang, Jie Zhang, Zhongmin Wang, Tao He, Prayag Tiwari