Title :
EMG controlled bionic arm
Author :
Gauthaam, M. ; Sathish Kumar, S.
Author_Institution :
B.E. Biomed. Eng., PSG Coll. of Technol., Coimbatore, India
Abstract :
The human hand is a complex system, with a large number of degrees of freedom (DoFs), sensors embedded in its structure, actuators and tendons, and a complex hierarchical control. Despite this complexity, the efforts required to the user to carry out the different movements are quite small. On the contrary, prosthetic hands are just a pale replication of the natural hand, with significantly reduced grasping capabilities and no sensory information delivered back to the user. Several attempts have been carried out to develop multifunctional Prosthetic devices controlled by electromyography (EMG) signals (myoelectric hands), harness (kinematic hands), dimensional changes in residual muscles, and so forth, but none of these methods permits the “natural” control of more than two DoFs. This paper presents a review of the traditional methods used to control artificial hands by means of EMG signal, in both the clinical and research contexts, and introduces what could be the future developments in the control strategy of these devices. This paper describes a novel approach to the control of a multifunctional prosthesis based on the classification of myoelectric patterns. It is shown that the myoelectric signal exhibits a deterministic structure during the initial phase of a muscle contraction. Features are extracted from several time segments of the myoelectric signal to preserve pattern structure. These features are then classified using an artificial neural network. The control signals are derived from natural contraction patterns which can be produced reliably with little subject training. The new control scheme increases the number of functions which can be controlled by a single channel of myoelectric signal but does so in a way which does not increase the effort required by the amputee. Results are presented to support this approach.
Keywords :
biological organs; biomechanics; electromyography; feature extraction; large-scale systems; medical signal processing; neural nets; prosthetics; EMG controlled bionic arm; artificial neural network; complex hierarchical control; complex system; control signals; electromyography signals; human hand; multifunctional prosthesis; multifunctional prosthetic devices; muscle contraction; myoelectric patterning; myoelectric signal; pale replication; pattern structure; prosthetic hands; residual muscle; sensory information; traditional method; Artificial neural networks; Electromyography; Feature extraction; Muscles; Pattern recognition; Prosthetics; Training; EMG based control; Electromyography (EMG) signal; artificial neural networks; hand prosthesis;
Conference_Titel :
Innovations in Emerging Technology (NCOIET), 2011 National Conference on
Conference_Location :
Erode, Tamilnadu
Print_ISBN :
978-1-61284-807-5
DOI :
10.1109/NCOIET.2011.5738813