Novel technologies for EMG (Electromyogram) based hand gesture recognition have been investigated for many industrial applications. In this paper, a novel approach which is based on a specific designed spiking convolution neural network which is fed by a novel EMG signal energy density map is presented. The experimental results indicate that the new approach not only rapidly decreases the required processing time but also increases the average recognition accuracy to 98.76% based on the Strathclyde dataset and to 98.21% based on the CapgMyo open source dataset. A relative comparison of experimental results between the proposed novel EMG based hand gesture recognition methodology and other similar approaches indicates the superior effectiveness of the new design.
K. Martin SagayamA. Diana AndrushiaAhona GhoshÖmer DeperlioğluAhmed A. Elngar
YI Sheng,LIANG Huagang,RU Feng
P. JayanthiPonsy R. K. Sathia Bhama
Savita AhlawatVaibhav BatraSnehashish BanerjeeJoydeep SahaAman Garg