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Ergonomic posture recognition using 3D view-invariant features from single ordinary camera

机译:使用单个普通摄像机的3D视图不变功能进行人体工学姿势识别

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摘要

Manual construction tasks are physically demanding, requiring prolonged awkward postures that can cause pain and injury. Person posture recognition (PPR) is essential in postural ergonomic hazard assessment. This paper proposed an ergonomic posture recognition method using 3D view-invariant features from a single 2D camera that is non-intrusive and widely installed on construction sites. Based on the detected 2D skeletons, view-invariant relative 3D joint position (R3DJP) and joint angle are extracted as classification features by employing a multi-stage convolutional nerual network (CNN) architecture, so that the learned classifier is not sensitive to camera viewpoints. Three posture classifiers regarding arms, back, and legs are trained, so that they can be simultaneously classified in one video frame. The posture recognition accuracies of three body parts are 98.6%, 99.5%, 99.8%, respectively. For generalization ability, the relevant accuracies are 94.9%, 93.9%, 94.6%, respectively. Both the classification accuracy and generalization ability of the method outperform previous vision-based methods in construction. The proposed method enables reliable and accurate postural ergonomic assessment for improving construction workers' safety and healthy.
机译:手动施工任务对身体的要求很高,需要长时间的笨拙姿势,这可能会导致疼痛和伤害。人体姿势识别(PPR)在姿势人体工程学危害评估中至关重要。本文提出了一种人体工程学的姿势识别方法,该方法利用来自非侵入式且广泛安装在建筑工地上的单个2D摄像机的3D视图不变特征进行识别。基于检测到的2D骨架,采用多级卷积神经网络(CNN)架构提取视图不变的相对3D关节位置(R3DJP)和关节角度作为分类特征,从而使学习到的分类器对相机视点不敏感。训练了关于手臂,背部和腿部的三个姿势分类器,以便可以在一个视频帧中同时对它们进行分类。三个身体部位的姿势识别精度分别为98.6%,99.5%,99.8%。对于泛化能力,相关的准确度分别为94.9%,93.9%,94.6%。该方法的分类准确性和泛化能力都优于以前的基于视觉的方法。所提出的方法能够进行可靠而准确的姿势人体工学评估,从而改善建筑工人的安全和健康。

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