Our previous study has shown the potential of using a computer system to accurately decode electromyographic (EMG) signals for neural controlled artificial legs. Because of computation complexity of the training algorithm coupled with real time requirement of controlling artificial legs, traditional embedded systems generally cannot be directly applied to the system. This paper presents a new design of an FPGA-based neural-machine interface for artificial legs. Both the training algorithm and the real time controlling algorithm are implemented on an FPGA. A soft processor built on the FPGA is used to manage hardware components and direct data flows. The implementation and evaluation of this design are based on Altera Stratix II GX EP2SGX90 ...
The artificial neural network (ANN) is an information processing model which is developed from the i...
The control of upper limb neuroprostheses through the peripheral nervous system (PNS) can allow rest...
Real-time acquisition and processing of electroencephalographic signals have promising applications ...
This paper presents a design and implementation of a neural-machine interface (NMI) for artificial l...
This paper presents a design and partial implementation of an embedded system as a part of neural-ma...
The quality-of-life of leg amputees can be improved dramatically by using a cyber-physical system (C...
This paper presents a design and implementation of a cyber-physical system (CPS) for neurally contro...
This paper presents the design and implementation of a cyber physical system (CPS) for neural-machin...
This paper presents a novel architecture of a lower limb neural machine interface (NMI) for determin...
This paper presents the design and implementation of a new neural-machine-interface (NMI) for contro...
This paper presents the design and implementation of a low power embedded system using mobile proces...
According to limb loss statistics, there are over one million leg amputees in the US whose lives are...
Abstract—The quality of life of leg amputees can be improved dramatically by using a cyber physical ...
According to limb loss statistics, there are over one million leg amputees in the US whose lives are...
Applying electromyographic (EMG) signal pattern recognition to artificial leg control is challenging...
The artificial neural network (ANN) is an information processing model which is developed from the i...
The control of upper limb neuroprostheses through the peripheral nervous system (PNS) can allow rest...
Real-time acquisition and processing of electroencephalographic signals have promising applications ...
This paper presents a design and implementation of a neural-machine interface (NMI) for artificial l...
This paper presents a design and partial implementation of an embedded system as a part of neural-ma...
The quality-of-life of leg amputees can be improved dramatically by using a cyber-physical system (C...
This paper presents a design and implementation of a cyber-physical system (CPS) for neurally contro...
This paper presents the design and implementation of a cyber physical system (CPS) for neural-machin...
This paper presents a novel architecture of a lower limb neural machine interface (NMI) for determin...
This paper presents the design and implementation of a new neural-machine-interface (NMI) for contro...
This paper presents the design and implementation of a low power embedded system using mobile proces...
According to limb loss statistics, there are over one million leg amputees in the US whose lives are...
Abstract—The quality of life of leg amputees can be improved dramatically by using a cyber physical ...
According to limb loss statistics, there are over one million leg amputees in the US whose lives are...
Applying electromyographic (EMG) signal pattern recognition to artificial leg control is challenging...
The artificial neural network (ANN) is an information processing model which is developed from the i...
The control of upper limb neuroprostheses through the peripheral nervous system (PNS) can allow rest...
Real-time acquisition and processing of electroencephalographic signals have promising applications ...