Yuhai Oleksandr, Cho Yubin, Mun Joung Hwan
Department of Bio-Mechatronic Engineering, College of Biotechnology and Bioengineering, Sungkyunkwan University, Suwon 16419, Republic of Korea.
Biosensors (Basel). 2025 Sep 17;15(9):618. doi: 10.3390/bios15090618.
Same-level-falls (SLFs) and falls-from-height (FFHs) remain major causes of severe injuries and fatalities on construction sites. Researchers are actively developing fall-prevention systems requiring accurate SLF and FFH detection in construction settings prone to false positives. In this study, a machine learning-based approach was established for accurate identification of SLF, FFH, and non-fall events using a single waist-mounted inertial measurement unit (IMU). A total of 48 participants executed 39 non-fall activities, 10 types of SLFs, and 8 types of FFHs, with a dummy used for falls exceeding 0.5 m. A two-stage feature extraction yielded 168 descriptors per data window, and an ensemble SHAP-PFI method selected the 153 most informative variables. The weighted XGBoost classifier, optimized via Bayesian techniques, outperformed other current boosting algorithms. Using 5-fold cross-validation, it achieved an average macro F1-score of 0.901 and macro Matthews correlation coefficient of 0.869, with a latency of 1.51 × 10 ms per window. Notably, the average lead times were 402 ms for SLFs and 640 ms for FFHs, surpassing the 130 ms inflation time required for wearable airbags. This pre-impact SLF and FFH detection approach delivers both rapid and precise detection, positioning it as a viable central component for wearable fall-prevention devices in fast-paced construction scenarios.
同水平跌倒(SLF)和高处坠落(FFH)仍然是建筑工地上严重受伤和死亡的主要原因。研究人员正在积极开发预防跌倒系统,在容易出现误报的建筑环境中需要准确检测SLF和FFH。在本研究中,建立了一种基于机器学习的方法,使用单个腰部佩戴的惯性测量单元(IMU)准确识别SLF、FFH和非跌倒事件。共有48名参与者进行了39项非跌倒活动、10种类型的SLF和8种类型的FFH,对于超过0.5米的跌倒使用了假人。两阶段特征提取每个数据窗口产生168个描述符,集成SHAP-PFI方法选择了153个信息最丰富的变量。通过贝叶斯技术优化的加权XGBoost分类器优于其他当前的增强算法。使用5折交叉验证,它实现了平均宏F1分数为0.901,宏马修斯相关系数为0.869,每个窗口的延迟为1.51×10毫秒。值得注意的是,SLF的平均提前时间为402毫秒,FFH的平均提前时间为640毫秒,超过了可穿戴安全气囊所需的130毫秒充气时间。这种撞击前SLF和FFH检测方法实现了快速精确的检测,使其成为快节奏建筑场景中可穿戴预防跌倒设备的可行核心组件。