On the use of postural synergies to improve human hand pose reconstruction

In this paper we consider the problem of estimating the posture of a human hand using sensing gloves, and how to improve their performance by exploiting the knowledge on how humans most frequently use their hands. We consider low-cost gloves providing measurements which are limited under several regards: they are generated through an imperfectly known model, are subject to noise, and are less than the number of degrees of freedom of the hand. Under these conditions, direct reconstruction of the hand pose is an ill-posed problem, and performance is very limited. To obtain an acceptable level of accuracy without modifying the glove hardware, hence basically at no extra cost, we propose to exploit the information on most frequent human hand poses, as represented in a database of postural synergies built beforehand. We discuss how such an a priori information can be fused with glove data in a consistent way, so as to provide a good hand pose reconstruction in spite of insufficient and inaccurate sensing data. Simulations and experiments on a low-cost glove are reported which demonstrate the effectiveness of the proposed techniques.

[1]  S C Gandevia,et al.  Distribution of the forces produced by motor unit activity in the human flexor digitorum profundus , 2002, The Journal of physiology.

[2]  W. Härdle,et al.  Applied Multivariate Statistical Analysis , 2003 .

[3]  P. Mahalanobis On the generalized distance in statistics , 1936 .

[4]  Carolyn R. Mason,et al.  Hand synergies during reach-to-grasp. , 2001, Journal of neurophysiology.

[5]  Lucy Pao,et al.  Transformation of human hand positions for robotic hand control , 1989, Proceedings, 1989 International Conference on Robotics and Automation.

[6]  H. Harry Asada,et al.  Inter-finger coordination and postural synergies in robot hands via mechanical implementation of principal components analysis , 2007, 2007 IEEE/RSJ International Conference on Intelligent Robots and Systems.

[7]  Antonio Bicchi,et al.  On motion and force controllability of grasping hands with postural synergies , 2010, Robotics: Science and Systems.

[8]  Marco Santello,et al.  Tracking whole hand kinematics using extended Kalman filter , 2010, 2010 Annual International Conference of the IEEE Engineering in Medicine and Biology.

[9]  Albert Tarantola,et al.  Inverse problem theory - and methods for model parameter estimation , 2004 .

[10]  Douglas M. Hawkins Identification of Outliers , 1980, Monographs on Applied Probability and Statistics.

[11]  Antonio Bicchi,et al.  On the Role of Hand Synergies in the Optimal Choice of Grasping Forces , 2010, Robotics: Science and Systems.

[12]  Marc H Schieber,et al.  Hand function: peripheral and central constraints on performance. , 2004, Journal of applied physiology.

[13]  D. De Rossi,et al.  Characterization of a Novel Data Glove Based on Textile Integrated Sensors , 2006, 2006 International Conference of the IEEE Engineering in Medicine and Biology Society.

[14]  Arthur Gelb,et al.  Applied Optimal Estimation , 1974 .

[15]  Antonio Bicchi,et al.  Hands for dexterous manipulation and robust grasping: a difficult road toward simplicity , 2000, IEEE Trans. Robotics Autom..

[16]  Carolyn R. Mason,et al.  Monkey hand postural synergies during reach-to-grasp in the absence of vision of the hand and object. , 2004, Journal of neurophysiology.

[17]  S. Gandevia,et al.  Limited independent flexion of the thumb and fingers in human subjects. , 1994, The Journal of physiology.

[18]  J F Soechting,et al.  Kinematics of typing: parallel control of the two hands. , 1992, Journal of neurophysiology.

[19]  A Gramsbergen,et al.  Handbook of Brain and Behaviour in Human Development. , 2001 .

[20]  Monica Malvezzi,et al.  Animating a Synergy-Based Deformable Hand Avatar for Haptic Grasping , 2010, EuroHaptics.

[21]  David Zeltzer,et al.  A survey of glove-based input , 1994, IEEE Computer Graphics and Applications.

[22]  Xudong Zhang,et al.  Determining finger segmental centers of rotation in flexion-extension based on surface marker measurement. , 2003, Journal of biomechanics.

[23]  J. F. Soechting,et al.  Postural Hand Synergies for Tool Use , 1998, The Journal of Neuroscience.