Jerde Thomas E, Soechting John F, Flanders Martha
Brown University, Providence, RI 02912, USA.
IEEE Trans Biomed Eng. 2003 Feb;50(2):265-9. doi: 10.1109/TBME.2002.807640.
This study sought to identify constraints that might lead to a concise system of recognizing fingerspelling hand shapes. Previous studies of grasping suggested that hand shape is controlled using combinations of a small number of neuromuscular synergies, but fingerspelling shapes appear to be more highly individuated and, therefore, might require a larger number of degrees of freedom. Static hand postures of the American Sign Language manual alphabet were recorded by measuring 17 joint angles. Principal components (PCs) analysis was compared to the use of subsets of individual variables (i.e., joint angles) for reduction in degrees of freedom. The first four PCs were similar across subjects. Classification using weightings from these four components was 86.6% accurate, while classification using four individual variables was 88.5% accurate (thumb abduction, as well as flexion at the index and middle finger proximal interphalangeal joints and the ring finger metacarpalphalangeal joint). When chosen for each subject, particular four-variable subsets yielded correct rates above 95%. This superior performance of variable subsets over PC weighting vectors suggests that the reduction in degrees of freedom is due to biomechanical and neuromuscular constraints rather than synergistic control. Thus, in future application to dynamic fingerspelling, reasonable recognition accuracy might be achieved with a significant reduction in both computational and measured degrees of freedom.
本研究旨在确定可能导致形成简洁的手指字母拼写手型识别系统的限制因素。先前关于抓握的研究表明,手型是通过少量神经肌肉协同作用的组合来控制的,但手指字母拼写形状似乎更具个体特异性,因此可能需要更多的自由度。通过测量17个关节角度记录了美国手语字母表的静态手部姿势。将主成分(PC)分析与使用单个变量子集(即关节角度)以减少自由度的方法进行了比较。前四个主成分在不同受试者之间相似。使用这四个成分的加权进行分类的准确率为86.6%,而使用四个单个变量(拇指外展以及食指、中指近端指间关节和无名指掌指关节的屈曲)进行分类的准确率为88.5%。当为每个受试者选择特定的四变量子集时,正确率高于95%。变量子集相对于主成分加权向量的这种优越性能表明,自由度的减少是由于生物力学和神经肌肉限制,而非协同控制。因此,在未来应用于动态手指字母拼写时,可能在显著减少计算和测量自由度的情况下实现合理的识别准确率。