Technical Challenge
Research into technical challenges across diverse AI applications reveals a common thread: improving model robustness, fairness, and explainability while addressing limitations in data availability and computational efficiency. Current efforts focus on developing and adapting model architectures (e.g., LLMs, YOLO variants, diffusion models) for specific tasks, refining evaluation metrics, and designing robust training and deployment strategies (e.g., federated learning). These advancements are crucial for ensuring the responsible and effective deployment of AI in various sectors, from healthcare and finance to manufacturing and environmental monitoring.
Papers
Challenges for Linguistically-Driven Computer-Based Sign Recognition from Continuous Signing for American Sign Language
Carol Neidle
Collaboration in Immersive Environments: Challenges and Solutions
Shahin Doroudian
The Open DAC 2023 Dataset and Challenges for Sorbent Discovery in Direct Air Capture
Anuroop Sriram, Sihoon Choi, Xiaohan Yu, Logan M. Brabson, Abhishek Das, Zachary Ulissi, Matt Uyttendaele, Andrew J. Medford, David S. Sholl
Radio Frequency Fingerprinting via Deep Learning: Challenges and Opportunities
Saeif Al-Hazbi, Ahmed Hussain, Savio Sciancalepore, Gabriele Oligeri, Panos Papadimitratos
A Comprehensive Review of AI-enabled Unmanned Aerial Vehicle: Trends, Vision , and Challenges
Osim Kumar Pal, Md Sakib Hossain Shovon, M. F. Mridha, Jungpil Shin
Meta learning with language models: Challenges and opportunities in the classification of imbalanced text
Apostol Vassilev, Honglan Jin, Munawar Hasan
Audio-Visual Speaker Tracking: Progress, Challenges, and Future Directions
Jinzheng Zhao, Yong Xu, Xinyuan Qian, Davide Berghi, Peipei Wu, Meng Cui, Jianyuan Sun, Philip J. B. Jackson, Wenwu Wang
Intelligent Escape of Robotic Systems: A Survey of Methodologies, Applications, and Challenges
Junfei Li, Simon X. Yang