The inertial measurement unit (IMU) has become more prevalent in gait analysis. However, it can only measure the kinematics of the body segment it is attached to. Muscle behaviour is an important part of gait analysis and provides a more comprehensive overview of gait quality. Muscle behaviour can be estimated using musculoskeletal modelling or measured using an electromyogram (EMG). However, both methods can be tasking and resource intensive. A combination of IMU and neural networks (NN) has the potential to overcome this limitation. Therefore, this study proposes using NN and IMU data to estimate nine lower extremity muscle activities. Two NN were developed and investigated, namely feedforward neural network (FNN) and long short-term memo...
Accurately measuring and predicting human movement is important in many contexts, such as in rehabil...
Joint moment measurements represent an objective biomechemical parameter in joint health assessment....
One symbolic (rule-based inductive learning) and one connectionist (neural network) machine learning...
The inertial measurement unit (IMU) has become more prevalent in gait analysis. However, it can only...
To give people more specific information on the quality of their daily motion, it is necessary to co...
The joint angle during gait is an important indicator, such as injury risk index, rehabilitation sta...
Reliability and user compliance of the applied sensor system are two key issues of digital healthcar...
This paper proposes a novel artificial neural network based method for real-time gait analysis with ...
Background: This paper focuses on the characteristics of lower limb EMG signals for common movements...
The application of artificial intelligence techniques to wearable sensor data may facilitate accurat...
Gait analysis is typically conducted using an optoelectronic system which is known as the standard m...
Using inertial measurement units (IMUs) to estimate lower limb joint kinematics and kinetics can pro...
This paper describes the use of a dynamic recurrent neural network (DRNN) for simulating lower limb ...
Joint angles are one of the fundamental parameters to control the exoskeleton robotic leg. This rese...
Estimating ankle joint power can be used to identify gait abnormalities, which is usually achieved b...
Accurately measuring and predicting human movement is important in many contexts, such as in rehabil...
Joint moment measurements represent an objective biomechemical parameter in joint health assessment....
One symbolic (rule-based inductive learning) and one connectionist (neural network) machine learning...
The inertial measurement unit (IMU) has become more prevalent in gait analysis. However, it can only...
To give people more specific information on the quality of their daily motion, it is necessary to co...
The joint angle during gait is an important indicator, such as injury risk index, rehabilitation sta...
Reliability and user compliance of the applied sensor system are two key issues of digital healthcar...
This paper proposes a novel artificial neural network based method for real-time gait analysis with ...
Background: This paper focuses on the characteristics of lower limb EMG signals for common movements...
The application of artificial intelligence techniques to wearable sensor data may facilitate accurat...
Gait analysis is typically conducted using an optoelectronic system which is known as the standard m...
Using inertial measurement units (IMUs) to estimate lower limb joint kinematics and kinetics can pro...
This paper describes the use of a dynamic recurrent neural network (DRNN) for simulating lower limb ...
Joint angles are one of the fundamental parameters to control the exoskeleton robotic leg. This rese...
Estimating ankle joint power can be used to identify gait abnormalities, which is usually achieved b...
Accurately measuring and predicting human movement is important in many contexts, such as in rehabil...
Joint moment measurements represent an objective biomechemical parameter in joint health assessment....
One symbolic (rule-based inductive learning) and one connectionist (neural network) machine learning...