Usability of Corrected Kinect Measurement for Ergonomic Evaluation in Constrained Environment

Pierre Plantard, Hubert P. H. Shum, F. Multon
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引用次数: 7

Abstract

Evaluation of potential risks of musculoskeletal disorders in real workstations is challenging as the environment is cluttered, which makes it difficult to correctly assess the pose of a worker. Being marker-free and calibration-free, Microsoft Kinect is a promising device to assess these poses, but it can deliver unreliable poses especially when occlusions occur. To overcome this problem, we propose to detect and correct badly recognised body parts thanks to a database of example poses. We applied the proposed method to compute rapid upper limb assessment (RULA) score in a realistic environment that involved sub-optimal Kinect placement and several types of occlusions. Results showed that when occlusions occur, the inaccurate raw Kinect data could be significantly improved using our correction method, leading to acceptable joint angles and RULA scores. Our method opens new perspectives to define new fatigue or solicitation indexes based on continuous measurement contrary to classical static images used in ergonomics.
约束环境中用于人体工程学评估的Kinect校正测量的可用性
在真实的工作站中评估肌肉骨骼疾病的潜在风险是具有挑战性的,因为环境混乱,这使得很难正确评估工人的姿势。由于没有标记和校准,微软Kinect是一种很有前途的设备来评估这些姿势,但它可能会提供不可靠的姿势,特别是当发生闭塞时。为了克服这一问题,我们提出利用一个例子姿态数据库来检测和纠正识别不良的身体部位。我们将提出的方法应用于在现实环境中计算快速上肢评估(RULA)得分,该环境涉及次优Kinect放置和几种类型的闭塞。结果表明,当发生咬合时,使用我们的校正方法可以显著改善不准确的原始Kinect数据,从而获得可接受的关节角度和RULA评分。我们的方法为定义基于连续测量的新的疲劳或诱导指标开辟了新的视角,而不是传统的人体工程学中使用的静态图像。
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