MDFG: Multi-Dimensional Fine-Grained Modeling for Fatigue Detection

Authors

  • Mei Wang National Engineering Research Center for Multimedia Software, School of Computer Science, Wuhan University Hubei Key Laboratory of Multimedia and Network Communication Engineering,Wuhan University
  • Xiaojie Zhu Cyberspace Security Laboratory, School of Network and Information Security, Xidian University
  • Ruimin Hu National Engineering Research Center for Multimedia Software, School of Computer Science, Wuhan University Hubei Key Laboratory of Multimedia and Network Communication Engineering,Wuhan University School of Cyber Science and Engineering, Wuhan University
  • Dongliang Zhu National Engineering Research Center for Multimedia Software, School of Computer Science, Wuhan University Hubei Key Laboratory of Multimedia and Network Communication Engineering,Wuhan University
  • Liang Liao The School of Computer Science and Engineering, Nanyang Technological University, Singapore
  • Mang Ye National Engineering Research Center for Multimedia Software, School of Computer Science, Wuhan University Hubei Key Laboratory of Multimedia and Network Communication Engineering,Wuhan University

DOI:

https://doi.org/10.1609/aaai.v39i12.33388

Abstract

Fatigue is a critical factor contributing to accidents in industries such as safety monitoring and engineering construction. Fatigue exhibits dynamic complexity and non-stationary characteristics, so there are many intermediate states of short-term variation between alert and fatigue. Capturing and learning the signs of these intermediate states is essential for accurate fatigue assessment. However, current fatigue detection methods primarily rely on coarse-grained labels, typically spanning minutes to hours, and commonly treat alert and fatigue as two distinctly separate distributions, overlooking the expression of intermediate states and oversimplifying the rich distribution information of fatigue types and levels, thereby limiting detection effectiveness. To address these, this paper explores a refined representation of fatigue in terms of three dimensions: time, type, and level, and proposes a Multi-Dimensional Fine-Grained Modeling for Fatigue Detection (MDFG). This introduces the SmallLoss to extract trustworthy samples, utilizes clustering to identify diverse subtypes under alert and fatigued states, and establishes base class sets in each state. Subsequently, a complete base class set containing intermediate state bases is constructed using the base class synthesis method, which achieves the expression of intermediate fatigue states from absence to presence. Finally, fatigue levels are quantified based on the matching between samples and the complete base class set. Moreover, to cope with the complex variability of fatigue states, MDFG employs meta-learning for training. MDFG achieves an Average accuracy improvement of 10.0% and 12.1% on two real datasets compared to methods that do not consider fine-grained information. Extensive experiments demonstrate that the MDFG exhibits superior robustness and stability among current fatigue detection methods.

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Published

2025-04-11

How to Cite

Wang, M., Zhu, X., Hu, R., Zhu, D., Liao, L., & Ye, M. (2025). MDFG: Multi-Dimensional Fine-Grained Modeling for Fatigue Detection. Proceedings of the AAAI Conference on Artificial Intelligence, 39(12), 12730–12738. https://doi.org/10.1609/aaai.v39i12.33388

Issue

Section

AAAI Technical Track on Data Mining & Knowledge Management II