使用动作捕捉和数字人体建模确定地下采矿工作姿势。

Timothy J Lutz, Joseph P DuCarme, Adam K Smith, Dean Ambrose
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引用次数: 2

摘要

根据美国矿山安全与健康管理局(MSHA)的数据,在2008-2012年期间,在美国,在涉及遥控连续采矿机(cmm)的日常采矿和维护活动中,平均每年发生65起损失时间的事故。为了解决这一问题,美国国家职业安全与健康研究所(NIOSH)目前正在研究地下矿山现有和新兴技术的实施和集成,以在三坐标测量机上提供自动化、智能接近检测(iPD)设备。NIOSH的一个研究目标是通过提高其跟踪和确定多名工人的身份、位置和姿势的能力来增强接近检测系统,并有选择地禁用机器功能,以保证工人和机器操作员的安全。矿工的姿态可以通过近距离探测磁场的变化来确定与三坐标测量机的安全工作距离。NIOSH收集并分析了12名受试者不同姿势的动作捕捉数据,并计算了背部、臀部和膝盖的关节角度。分析结果表明,可以通过观察右髋、左髋、右膝、左膝关节角度的变化来识别下半身姿势。
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Determining Underground Mining Work Postures Using Motion Capture and Digital Human Modeling.

According to Mine Safety and Health Administration (MSHA) data, during 2008-2012 in the U.S., there were, on average, 65 lost-time accidents per year during routine mining and maintenance activities involving remote-controlled continuous mining machines (CMMs). To address this problem, the National Institute for Occupational Safety and Health (NIOSH) is currently investigating the implementation and integration of existing and emerging technologies in underground mines to provide automated, intelligent proximity detection (iPD) devices on CMMs. One research goal of NIOSH is to enhance the proximity detection system by improving its capability to track and determine identity, position, and posture of multiple workers, and to selectively disable machine functions to keep workers and machine operators safe. Posture of the miner can determine the safe working distance from a CMM by way of the variation in the proximity detection magnetic field. NIOSH collected and analyzed motion capture data and calculated joint angles of the back, hips, and knees from various postures on 12 human subjects. The results of the analysis suggests that lower body postures can be identified by observing the changes in joint angles of the right hip, left hip, right knee, and left knee.

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