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Comparative Study of Motion Features for Similarity-Based Modeling and Classification of Unsafe Actions in Construction

机译:基于相似度建模和施工中不安全动作分类的运动特征比较研究

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摘要

Rapid development of motion sensors and video processing has triggered growing attention to action recognition for safety and health analysis, as well as operation analysis, in construction. Specifically for occupational safety and health, worker behavior monitoring allows for the automatic detection of workers' unsafe actions and for feedback on their behavior, both of which enable the proactive prevention of an accident by reducing the number of unsafe actions that occur. Previous studies provide insight into tracking human movements and recognizing actions, but further research efforts are needed to understand the following characteristics of motion data, which can significantly affect classification performances: (1) various motion data types extracted from motion capture data, (2) variations of postures and actions, and (3) temporal and sequential relations of motion data. This paper thus presents a modeling and classification methodology for the recognition of unsafe actions, particularly focusing on (1) the description and comparison of four motion data types (i.e., rotation angles, joint angles, position vectors, and movement direction) that will be used as a feature for classification, (2) the estimation of actions' mean trajectory in order to model various patterns of action, and (3) the classification of actions based on spatial-temporal similarity. With a concentration on motion analysis, experiments were undertaken for the modeling and detection of actions during ladder climbing using an red, green, blue plus depth (RGB-D) sensor. Through the experimental study, we found that the proposed approach performs well (i.e., an accuracy of up to 99.5% in lab experiments), that a rotation angle outperforms a joint angle and a position vector, and that movement direction explicitly improves the accuracy of motion classification as combined with each of the other three.
机译:运动传感器和视频处理技术的快速发展引起了人们对建筑安全和健康分析以及操作分析中动作识别的关注。专门针对职业安全和健康,工人行为监控可自动检测工人的不安全行为并提供有关其行为的反馈,这两者均可通过减少发生的不安全行为的数量来主动预防事故。先前的研究提供了对跟踪人类运动和识别动作的见解,但是需要进一步的研究来理解运动数据的以下特征,这些特征可能会严重影响分类性能:(1)从运动捕获数据中提取的各种运动数据类型,(2)姿势和动作的变化,以及(3)运动数据的时间和顺序关系。因此,本文提出了一种用于识别不安全动作的建模和分类方法,特别着重于(1)描述和比较四种运动数据类型(即旋转角度,关节角度,位置矢量和运动方向)。用作分类的特征,(2)估计动作的平均轨迹以对各种动作模式进行建模,以及(3)基于时空相似度的动作分类。专注于运动分析,使用红色,绿色,蓝色和深度(RGB-D)传感器对爬梯过程中的动作建模和检测进行了实验。通过实验研究,我们发现所提出的方法性能良好(即,在实验室实验中的精度高达99.5%),旋转角优于关节角和位置矢量,并且运动方向明显提高了运动分类与其他三个分类相结合。

著录项

  • 来源
    《Journal of Computing in Civil Engineering》 |2014年第5期|A4014005.1-A4014005.11|共11页
  • 作者单位

    Dept. of Civil and Environmental Engineering, Univ. of Illinois at Urbana-Champaign, 205 North Mathews Ave., Urbana, IL 61801;

    Dept. of Civil and Environmental Engineering, Univ. of Michigan, 2340 GG Brown, 2350 Hayward St., Ann Arbor, MI 48109;

    Dept. of Civil Engineering and Engineering Mechanics, Earth and Environmental Engineering, and Computer Science, Columbia Univ., 628 S.W. Mudd Building, 500 West 120th St., New York, NY 10027;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Safety; Motion capture; Action recognition; Dimension reduction; Machine learning; Classification;

    机译:安全;动作捕捉;动作识别;尺寸缩小;机器学习;分类;

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