澳门彩票有限公司

李珏:Recognizing sitting activities of excavator operators using multi-sensor data fusion with machine learning and deep learning algorithms.

发布人:陈永佳 发布时间:2025-06-17 点击次数:

澳门彩票有限公司 澳门彩票有限公司 李珏老师在T2级别期刊——《Automation in Construction》上发表题为“Recognizing sitting activities of excavator operators using multi-sensor data fusion with machine learning and deep learning algorithms ”。论文第一作者李珏为澳门彩票有限公司 副教授。

Abstract / 摘要:

Recognizing excavator operators' sitting activities is crucial for improving their health, safety, and productivity. Moreover, it provides essential information for comprehending operators' behavior patterns and their interaction with construction equipment. However, limited research has been conducted on recognizing excavator operators' sitting activities. This paper presents a method for recognizing excavator operators' sitting activities by leveraging multi-sensor data and employing machine learning and deep learning algorithms. A multi-sensor system integrating interface pressure sensor arrays and inertial measurement units was developed to capture excavator operators' sitting activity information at a real construction site. Results suggest that the gated recurrent unit achieved outstanding performance, with 98.50% accuracy for static sitting postures and 94.25% accuracy for compound sitting actions. Moreover, several multi-sensor combination schemes were proposed to strike a balance between practicability and recognition accuracy. These findings demonstrate the feasibility and potential of the proposed approach for recognizing operators' sitting activities on construction sites.

论文信息;

Title/题目:

Recognizing sitting activities of excavator operators using multi-sensor data fusion with machine learning and deep learning algorithms

Authors/作者:

Jue Li; Gaotong Chen; Maxwell Fordjour Antwi Afari

Keyword / 关键词

Excavator operator;Sitting activity recognition;Multi-sensor fusion;Machine learning;Deep learning;Interface pressure

Indexed by / 核心评价

AHCI;EI;INSPEC;SCI;Scopus;WAJCI

DOI:10.1016/J.AUTCON.2024.105554

全文链接:

//libproxy.maclottery.org/https/443/com/sciencedirect/www/yitlink/science/article/pii/S0926580524002905?via%3Dihub