One symbolic (rule-based inductive learning) and one connectionist (neural network) machine learning technique were used to reconstruct muscle activation patterns from kinematic data measured during normal human walking at several speeds. The activation patterns (or desired outputs) consisted of surface electromyographic (EMG) signals from the semitendinosus and vastus medialis muscles. The inputs consisted of flexion and extension angles measured at the hip and knee of the ipsilateral leg, their first and second derivatives, and bilateral foot contact information. The training set consisted of data from six trials, at two different speeds. The testing set consisted of data from two additional trials (one at each speed), which were not in t...
(EMG) is a method for measuring muscle activity by an electrical signal, and is useful in studying m...
Neural information decomposed from electromyography (EMG) signals provides a new path of EMG-based h...
Limited stride-time variability is considered a marker of safe walking. Thus, the measurement of str...
One symbolic (rule-based inductive learning) and one connectionist (neural network) machine learning...
The control of human locomotion engages various brain structures and numerous muscles. Even though t...
A key factor in physical rehabilitation is the active participation of the patients in exerting effo...
This paper describes the use of a dynamic recurrent neural network (DRNN) for simulating lower limb ...
The ultimate goal of much research in biomedical engineering is the construction of an artificial wa...
A gait model capable of generating human-like walking behavior at both the kinematic and the muscula...
Measuring stride duration as a marker of regular walking is a relevant issue, also in the modern gai...
BACKGROUND: Accurate prediction of electromyographic (EMG) signals associated with a variety of moto...
The inertial measurement unit (IMU) has become more prevalent in gait analysis. However, it can only...
Abstract. In this paper several nonparametric supervised machine learning (ML) techniques for automa...
Identification and classification of different gait phases is an essential requirement to temporally...
Ankle joint power is usually determined by a complex process that involves heavy equipment and compl...
(EMG) is a method for measuring muscle activity by an electrical signal, and is useful in studying m...
Neural information decomposed from electromyography (EMG) signals provides a new path of EMG-based h...
Limited stride-time variability is considered a marker of safe walking. Thus, the measurement of str...
One symbolic (rule-based inductive learning) and one connectionist (neural network) machine learning...
The control of human locomotion engages various brain structures and numerous muscles. Even though t...
A key factor in physical rehabilitation is the active participation of the patients in exerting effo...
This paper describes the use of a dynamic recurrent neural network (DRNN) for simulating lower limb ...
The ultimate goal of much research in biomedical engineering is the construction of an artificial wa...
A gait model capable of generating human-like walking behavior at both the kinematic and the muscula...
Measuring stride duration as a marker of regular walking is a relevant issue, also in the modern gai...
BACKGROUND: Accurate prediction of electromyographic (EMG) signals associated with a variety of moto...
The inertial measurement unit (IMU) has become more prevalent in gait analysis. However, it can only...
Abstract. In this paper several nonparametric supervised machine learning (ML) techniques for automa...
Identification and classification of different gait phases is an essential requirement to temporally...
Ankle joint power is usually determined by a complex process that involves heavy equipment and compl...
(EMG) is a method for measuring muscle activity by an electrical signal, and is useful in studying m...
Neural information decomposed from electromyography (EMG) signals provides a new path of EMG-based h...
Limited stride-time variability is considered a marker of safe walking. Thus, the measurement of str...