Background: Machine learning models were satisfactorily implemented for estimating gait events from surface electromyographic (sEMG) signals during walking. Most of them are based on inter-subject approaches for data preparation. Aim of the study is to propose an intra-subject approach for binary classifying gait phases and predicting gait events based on neural network interpretation of sEMG signals and to test the hypothesis that the intra-subject approach is able to achieve better performances compared to an inter-subject one. To this aim, sEMG signals were acquired from 10 leg muscles in about 10.000 strides from 23 healthy adults, during ground walking, and a multi-layer perceptron (MLP) architecture was implemented. Results: Classific...
Limited stride-time variability is considered a marker of safe walking. Thus, the measurement of str...
Exposure to physical therapy in rehabilitation shows a major interest in recent years. Even though t...
Background: Muscular‐activity timing is useful information that is extractable from surface EMG sign...
Background: Machine learning models were satisfactorily implemented for estimating gait events from ...
Machine-learning approaches are satisfactorily implemented for classifying and assessing gait events...
Identification and classification of different gait phases is an essential requirement to temporally...
Measuring stride duration as a marker of regular walking is a relevant issue, also in the modern gai...
Correctly identifying gait phases is a prerequisite to achieve a spatial/temporal characterization o...
Artificial neural networks were satisfactorily implemented for assessing gait events from different ...
Machine-learning techniques are suitably employed for gait-event prediction from only surface electr...
Machine-learning techniques are suitably employed for gait-event prediction from only surface electr...
In many gait applications, the focal events are the stance and swing phases. Although detecting gait...
In this thesis, an algorithm to estimate the gait trajectory based upon the electromyography (EMG) s...
Limited stride-time variability is considered a marker of safe walking. Thus, the measurement of str...
Exposure to physical therapy in rehabilitation shows a major interest in recent years. Even though t...
Background: Muscular‐activity timing is useful information that is extractable from surface EMG sign...
Background: Machine learning models were satisfactorily implemented for estimating gait events from ...
Machine-learning approaches are satisfactorily implemented for classifying and assessing gait events...
Identification and classification of different gait phases is an essential requirement to temporally...
Measuring stride duration as a marker of regular walking is a relevant issue, also in the modern gai...
Correctly identifying gait phases is a prerequisite to achieve a spatial/temporal characterization o...
Artificial neural networks were satisfactorily implemented for assessing gait events from different ...
Machine-learning techniques are suitably employed for gait-event prediction from only surface electr...
Machine-learning techniques are suitably employed for gait-event prediction from only surface electr...
In many gait applications, the focal events are the stance and swing phases. Although detecting gait...
In this thesis, an algorithm to estimate the gait trajectory based upon the electromyography (EMG) s...
Limited stride-time variability is considered a marker of safe walking. Thus, the measurement of str...
Exposure to physical therapy in rehabilitation shows a major interest in recent years. Even though t...
Background: Muscular‐activity timing is useful information that is extractable from surface EMG sign...