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基于机器学习的框架,用于使用单个可穿戴惯性测量单元检测建筑工地上的碰撞前同水平跌倒和高处坠落。

Machine Learning-Based Framework for Pre-Impact Same-Level Fall and Fall-from-Height Detection in Construction Sites Using a Single Wearable Inertial Measurement Unit.

作者信息

Yuhai Oleksandr, Cho Yubin, Mun Joung Hwan

机构信息

Department of Bio-Mechatronic Engineering, College of Biotechnology and Bioengineering, Sungkyunkwan University, Suwon 16419, Republic of Korea.

出版信息

Biosensors (Basel). 2025 Sep 17;15(9):618. doi: 10.3390/bios15090618.

Abstract

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.

摘要

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。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fba8/12467572/a133552a68a3/biosensors-15-00618-g001.jpg

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本文引用的文献

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Deep learning-based system for prediction of work at height in construction site.基于深度学习的建筑工地高处作业预测系统。
Heliyon. 2025 Jan 17;11(2):e41779. doi: 10.1016/j.heliyon.2025.e41779. eCollection 2025 Jan 30.
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