Joint moment measurements represent an objective biomechemical parameter in joint health assessment. Inverse dynamics based on 3D motion capture data is the current 'gold standard’ to estimate joint moments. Recently, machine learning combined with data measured by wearable technologies such electromyography (EMG), inertial measurement units (IMU), and electrogoniometers (GON) has been used to enable fast, easy, and low-cost measurements of joint moments. This study investigates the ability of various deep neural networks to predict lower limb joint moments merely from IMU sensors. The performance of five different deep neural networks (InceptionTimePlus, eXplainable convolutional neural network (XCM), XCMplus, Recurrent neural network (RNN...
Objective: Monitoring athlete internal workload exposure, including prevention of catastrophic non-c...
Accurately measuring the lower extremities and L5/S1 moments is important since L5/S1 moments are th...
Joint angles are one of the fundamental parameters to control the exoskeleton robotic leg. This rese...
Joint moment measurements represent an objective biomechemical parameter in joint health assessment....
Joint moments are commonly calculated in biomechanics research and provide an indirect measure of mu...
The high cost and low portability of measurement systems as well as time-consuming inverse dynamic c...
Using inertial measurement units (IMUs) to estimate lower limb joint kinematics and kinetics can pro...
Joint moment is one of the most important factors in human gait analysis. It can be calculated using...
The application of IMUs and artificial neural networks have shown their potential in estimating join...
Gait analysis is typically conducted using an optoelectronic system which is known as the standard m...
The purpose of this study was to develop an artificial neural network (ANN) model for predicting the...
Estimating ankle joint power can be used to identify gait abnormalities, which is usually achieved b...
Knee joint moments are commonly calculated to provide an indirect measure of knee joint loads. A sho...
The application of artificial intelligence techniques to wearable sensor data may facilitate accurat...
Reliability and user compliance of the applied sensor system are two key issues of digital healthcar...
Objective: Monitoring athlete internal workload exposure, including prevention of catastrophic non-c...
Accurately measuring the lower extremities and L5/S1 moments is important since L5/S1 moments are th...
Joint angles are one of the fundamental parameters to control the exoskeleton robotic leg. This rese...
Joint moment measurements represent an objective biomechemical parameter in joint health assessment....
Joint moments are commonly calculated in biomechanics research and provide an indirect measure of mu...
The high cost and low portability of measurement systems as well as time-consuming inverse dynamic c...
Using inertial measurement units (IMUs) to estimate lower limb joint kinematics and kinetics can pro...
Joint moment is one of the most important factors in human gait analysis. It can be calculated using...
The application of IMUs and artificial neural networks have shown their potential in estimating join...
Gait analysis is typically conducted using an optoelectronic system which is known as the standard m...
The purpose of this study was to develop an artificial neural network (ANN) model for predicting the...
Estimating ankle joint power can be used to identify gait abnormalities, which is usually achieved b...
Knee joint moments are commonly calculated to provide an indirect measure of knee joint loads. A sho...
The application of artificial intelligence techniques to wearable sensor data may facilitate accurat...
Reliability and user compliance of the applied sensor system are two key issues of digital healthcar...
Objective: Monitoring athlete internal workload exposure, including prevention of catastrophic non-c...
Accurately measuring the lower extremities and L5/S1 moments is important since L5/S1 moments are th...
Joint angles are one of the fundamental parameters to control the exoskeleton robotic leg. This rese...