The purpose of this study is to develop a machine-learning-based regressor to estimate the gait-related parameters from the foot characteristics extracted by a foot scanning system. A fully-connected feed-forward neural network model was used to predict the gait parameters. The inputs of the model were the foot arch features and body anthropometric data, while the outputs of the model were the spatiotemporal gait parameters of the regular walking. The performance of the model was verified showing the accuracy of 95% or higher confirming the facts that foot features are dominant factors to estimate personalized gait patterns. In conclusion, the gait pattern can be easily assessed by measuring the foot depth-image from the foot scanner withou...
Machine learning is a powerful tool for making predictions and has been widely used for solving vari...
The majority of human gait analysis methods are limited to clinical gait laboratories. The calculati...
This thesis alms to investigate how machine learning and statistical approaches can be employed to s...
We analysed the correlation between the foot features such as foot length, foot width, the height an...
This book focuses on how machine learning techniques can be used to analyze and make use of one part...
Background: Gait recognition has been applied in the prediction of the probability of elderly flat g...
Gait analysis is a common technique used to identify problems related to movement and posture in peo...
Person recognition systems based on biometrics have recently attracted a lot of attention in the sci...
The purpose of this study was to estimate the spatiotemporal gait parameters from step time informat...
The pervasiveness of wearable sensors has contributed to plenty of daily activity data and greatly i...
The miniaturization of sensors and their availability for biomechanical analysis outside of the labo...
Walking has been demonstrated to improve health in people with diabetes and peripheral arterial dise...
The majority of human gait analysis methods are limited to clinical gait laboratories. The calculati...
Gait performance is an important marker of motor and cognitive decline in older adults. An instrumen...
This paper proposes a novel artificial neural network based method for real-time gait analysis with ...
Machine learning is a powerful tool for making predictions and has been widely used for solving vari...
The majority of human gait analysis methods are limited to clinical gait laboratories. The calculati...
This thesis alms to investigate how machine learning and statistical approaches can be employed to s...
We analysed the correlation between the foot features such as foot length, foot width, the height an...
This book focuses on how machine learning techniques can be used to analyze and make use of one part...
Background: Gait recognition has been applied in the prediction of the probability of elderly flat g...
Gait analysis is a common technique used to identify problems related to movement and posture in peo...
Person recognition systems based on biometrics have recently attracted a lot of attention in the sci...
The purpose of this study was to estimate the spatiotemporal gait parameters from step time informat...
The pervasiveness of wearable sensors has contributed to plenty of daily activity data and greatly i...
The miniaturization of sensors and their availability for biomechanical analysis outside of the labo...
Walking has been demonstrated to improve health in people with diabetes and peripheral arterial dise...
The majority of human gait analysis methods are limited to clinical gait laboratories. The calculati...
Gait performance is an important marker of motor and cognitive decline in older adults. An instrumen...
This paper proposes a novel artificial neural network based method for real-time gait analysis with ...
Machine learning is a powerful tool for making predictions and has been widely used for solving vari...
The majority of human gait analysis methods are limited to clinical gait laboratories. The calculati...
This thesis alms to investigate how machine learning and statistical approaches can be employed to s...