Feature extraction and quantification of the variability of dynamic performance profiles due to the different sagittal lift characteristics.

K A Khalaf, M Parnianpour, P J Sparto, K Barin
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引用次数: 14

Abstract

Investigation of manual material handling (MMH) tasks, such as lifting, requires the quantification of the various kinematic and kinetic parameters of performance for assessment of the functional capacity and/or task demand profiles. Traditional statistical descriptive analyses usually involve computing the summary statistics (maximum, minimum, mean, and/or range) of the resulting performance parameters over the cycle duration (i.e., lifting/lowering cycle). Consequently, the significant information content of the time-varying signals is diminished, limiting the sensitivity of subsequent hypothesis testing procedures. The present study developed a methodology for representing and quantifying performance data variability of the kinematic and kinetic motion profiles due to the different lift characteristics (load, mode, and speed) during MMH tasks while capturing the temporal characteristics. Using a database of motion profiles from a manual lifting experiment, the Karhunen-Loeve Expansion (KLE) feature extraction technique was shown to be quite effective for representing the various motion profiles. The number of basis vectors (eigenvectors) and corresponding coefficients needed for accurate representation were substantially smaller than the original data set, resulting in data compression. Moreover, the effects of lift characteristics were investigated using analysis of variance techniques that recognize the vectorial constitution of the waveforms. The application of these techniques will enable the quantification of highly phasic profiles and enhance the ability to document the effect of intervening measures such as educational or physical training/exercise on the kinematic and kinetic patterns of performance. Additionally, the differential influence of lift characteristics on the variability of performance during different phases of lifting and lowering provides added resolution in the analysis of MMH tasks.

不同矢状面升力特征对动态性能变化的特征提取与量化。
对手工物料搬运(MMH)任务的调查,例如起重,需要对各种性能的运动学和动力学参数进行量化,以评估功能能力和/或任务需求概况。传统的统计描述性分析通常涉及计算整个周期(即提升/降低周期)内所得性能参数的汇总统计(最大值、最小值、平均值和/或范围)。因此,时变信号的重要信息含量减少,限制了后续假设检验程序的灵敏度。本研究开发了一种方法,用于表示和量化MMH任务中由于不同升力特性(负载、模式和速度)而导致的运动学和动力学运动剖面的性能数据可变性,同时捕获时间特征。利用人工举举实验的运动轮廓数据库,Karhunen-Loeve展开(KLE)特征提取技术可以有效地表示各种运动轮廓。精确表示所需的基向量(特征向量)和相应系数的数量大大小于原始数据集,导致数据压缩。此外,利用识别波形矢量构成的方差分析技术研究了升力特性的影响。这些技术的应用将使高相位剖面的量化成为可能,并增强记录干预措施(如教育或体育训练/锻炼)对运动和运动模式的影响的能力。此外,在不同的升降阶段,升降特性对性能变异性的不同影响为MMH任务的分析提供了额外的分辨率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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