2020
DOI: 10.1109/access.2020.3039885
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A Machine Learning Approach to Perform Physical Activity Classification Using a Sensorized Crutch Tip

Abstract: In recent years, interest in monitoring Physical Activity (PA) has increased due to its positive effect on health. New technological devices have been proposed for this purpose, mainly focused on sports, which include Machine Learning algorithms to identify the type of PA being performed. However, PA monitoring can also provide data useful for assessing the recovery process of people with impaired lower-limbs. In this work, a Machine-Learning based Physical Activity classifier design procedure is proposed, whi… Show more

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Cited by 18 publications
(9 citation statements)
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“…On the other hand, they are more adaptable to changes in the input data, being able to retrain the model without the need for large adjustments. Finally, they can detect correlations in the input data, often not evident to humans, and can automatically learn the relative importance of the input features, eliminating or ignoring those that are redundant [ 75 ].…”
Section: Sitting Posture Anomaly Detection Techniquesmentioning
confidence: 99%
See 1 more Smart Citation
“…On the other hand, they are more adaptable to changes in the input data, being able to retrain the model without the need for large adjustments. Finally, they can detect correlations in the input data, often not evident to humans, and can automatically learn the relative importance of the input features, eliminating or ignoring those that are redundant [ 75 ].…”
Section: Sitting Posture Anomaly Detection Techniquesmentioning
confidence: 99%
“…This algorithm, based on the gradient descent method, seeks to modify the weights of each neuron to reduce the global error, starting from the last layer and continuing with the preceding layers. Thus, in [ 75 , 80 , 81 ], use this type of networks are used to perform recognition of activities, such as climbing stairs, or running, as well as various postures. However, these works focus more on activity recognition and do not put their focus on postural diagnosis in seated position of wheelchair users.…”
Section: Sitting Posture Anomaly Detection Techniquesmentioning
confidence: 99%
“…Output classes: the output of a HAR module depends on the application. For instance, some studies considered a relatively low number of classes [18], [19], like level walking, going upstairs/downstairs, and staying still. Others have targeted a large number of ADLs (up to 16 classes) [20], [21], with activities like brushing teeth and cutting food.…”
Section: A Related Workmentioning
confidence: 99%
“…Debido a los sensores que lleva incorporada la CI [1] es posible capturar las variables básicas necesarias tanto para la caracterización de la marcha como del equilibrio de los pacientes EM [4]. En total se capturan las siguientes variables:…”
Section: Contera Inteligenteunclassified