National Institute for Occupational Safety and Health, National Personal Protective Technology Laboratory, Bruceton Research Facility, P.O. Box 18070, 626 Cochrans Mill Road, Pittsburgh, PA 15236, USA.
Appl Ergon. 2013 Sep;44(5):775-84. doi: 10.1016/j.apergo.2013.01.008. Epub 2013 Feb 8.
The objective of this study was to quantify head-and-face shape variations of U.S. civilian workers using modern methods of shape analysis. The purpose of this study was based on previously highlighted changes in U.S. civilian worker head-and-face shape over the last few decades - touting the need for new and better fitting respirators - as well as the study's usefulness in designing more effective personal protective equipment (PPE) - specifically in the field of respirator design. The raw scan three-dimensional (3D) data for 1169 subjects were parameterized using geometry processing techniques. This process allowed the individual scans to be put in correspondence with each other in such a way that statistical shape analysis could be performed on a dense set of 3D points. This process also cleaned up the original scan data such that the noise was reduced and holes were filled in. The next step, statistical analysis of the variability of the head-and-face shape in the 3D database, was conducted using Principal Component Analysis (PCA) techniques. Through these analyses, it was shown that the space of the head-and-face shape was spanned by a small number of basis vectors. Less than 50 components explained more than 90% of the variability. Furthermore, the main mode of variations could be visualized through animating the shape changes along the PCA axes with computer software in executable form for Windows XP. The results from this study in turn could feed back into respirator design to achieve safer, more efficient product style and sizing. Future study is needed to determine the overall utility of the point cloud-based approach for the quantification of facial morphology variation and its relationship to respirator performance.
本研究的目的是使用现代形状分析方法来量化美国民用工人的头面部形状变化。本研究的目的是基于之前强调的美国民用工人头面部形状在过去几十年中的变化——需要新的、更合适的呼吸器——以及该研究在设计更有效的个人防护设备(PPE)方面的有用性——特别是在呼吸器设计领域。1169 名受试者的原始扫描三维(3D)数据使用几何处理技术进行参数化。该过程允许将各个扫描彼此对应,以便可以在密集的 3D 点集上执行统计形状分析。该过程还清理了原始扫描数据,从而减少了噪声并填充了孔。下一步,使用主成分分析(PCA)技术对 3D 数据库中头面部形状的可变性进行统计分析。通过这些分析,表明头面部形状的空间由少量的基向量表示。少于 50 个分量解释了超过 90%的可变性。此外,可以通过使用可执行形式的 Windows XP 计算机软件沿 PCA 轴动画化形状变化来可视化主要的变化模式。反过来,这项研究的结果可以反馈到呼吸器设计中,以实现更安全、更高效的产品样式和尺寸。需要进一步研究以确定基于点云的方法对头面部形态变化的定量及其与呼吸器性能的关系的整体实用性。