Abstract

Kinematic synergies in human hand movements have shown promising applications in dexterous control of robotic and prosthetic hands. We and others have previously derived kinematic synergies from human hand grasping movements using a widely used linear dimensionality reduction method, Principal Component Analysis (PCA). As the human biomechanical system is inherently nonlinear, using nonlinear dimensionality reduction methods to derive kinematic synergies might be expected to improve the representation of human hand movements in reduced dimensions. In this paper, we derived linear and nonlinear kinematic synergies from linear (PCA), globally nonlinear (Isomap, Stochastic Proximity Embedding (SPE), Sammon Mapping (SaM), and Stochastic Neighbor Embedding (SNE)) and locally nonlinear (Local Linear Embedding (LLE), LaplacianEigenmaps (LaE), and Local Tangent Space Alignment (LTSA)) dimensionality reduction methods. Synergies derived from linear PCA and nonlinear SaMwere able to capture multiple functional postures and physiological patterns. Results from natural hand grasping movements indicated that PCA performed better than all nonlinear dimensionality reduction methods used in the paper. Results from ASL postural movements indicated that PCA, SaM, and SPE better generalized over ASL postural movements when compared to other methods. Overall, our results show that PCA derived synergies offer qualitative and quantitative advantages over nonlinear methods as a limited number of kinematic synergies begin to be implemented in human prosthetics.

Highlights

  • The hand is tasked with creating a multitude of postures in everyday life in order to grasp, use, and manipulate objects

  • Especially in the human hand present a unique testing environment for two reasons: (1) the human hand has the most degrees of freedom (DoF) in the body and (2) we and others have observed that hand movements in activities of daily living (ADL) involving hand grasping can be reconstructed with 90% accuracy using six synergies [7,11]

  • A comparison of performance was made between principal component analysis (PCA) and unsupervised linear discriminant analysis (ULDA) we found that PCA outperformed ULDA [12]

Read more

Summary

Introduction

The hand is tasked with creating a multitude of postures in everyday life in order to grasp, use, and manipulate objects. Especially in the human hand present a unique testing environment for two reasons: (1) the human hand has the most DoFs in the body and (2) we and others have observed that hand movements in activities of daily living (ADL) involving hand grasping can be reconstructed with 90% accuracy using six synergies [7,11]. These six synergies were computed using principal component analysis (PCA) and accommodated for more than 90% of the variance in the joint kinematics. This means that high dimensional control (25 DoF) control can potentially be reduced to low dimensional control (6 functional DoF)

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call