The XFMP dataset for Explainable Fine-Grained Abnormal Behavior Recognition on Medical Personal Protective Equipment
收藏科学数据银行2024-11-26 更新2026-04-23 收录
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资源简介:
The XFMP dataset is designed for abnormal behavior recognition on medical personal protective equipment, which features fine-grained and explainable annotations. The proper use of medical personal protective equipment (MPPE) is critical for frontline healthcare workers (HCWs) to handle highly contagious diseases. Due to the complexity of PPE donning and doffing protocols, public health organizations typically recommend having trained observers monitor the entire PPE donning and doffing process, preventing self-contamination and transmission. However, the high costs of manual monitoring impede the implementation of this practice, which makes AI-assisted PPE monitoring highly valuable. To address this, we propose an explainable and fine-grained dataset for MPPE doffing monitoring called the XFMP dataset. The dataset contains 3596 expert-annotated samples over three sub-tasks: doffing stage classification (DSC), abnormal action recognition (AAR), and critical region localization (CRL).
提供机构:
Xuebing Yang; Guangdong Provincial People's Hospital; PhiGent Robotics Technology Company Ltd., Beijing, China; Guangdong Academy of Medical Sciences; Yanjuan Liu; Institute of Automation, Chinese Academy of Sciences; Yongqiang Tang; Jinghao Niu; Weifeng Li; Binbin He; Wensheng Zhang; Jiaxi Liu
创建时间:
2024-11-21



