© 2019 by the authors. Licensee MDPI, Basel, Switzerland. The validity of results in race walking is often questioned due to subjective decisions in the detection of faults. This study aims to compare machine-learning algorithms fed with data gathered from inertial sensors placed on lower-limb segments to define the best-performing classifiers for the automatic detection of illegal steps. Eight race walkers were enrolled and linear accelerations and angular velocities related to pelvis, thighs, shanks, and feet were acquired by seven inertial sensors. The experimental protocol consisted of two repetitions of three laps of 250 m, one performed with regular race walking, one with loss-of-contact faults, and one with knee-bent faults. The perf...
Falls are a serious public health problem and possibly life threatening for people in fall risk grou...
In this work we will show some preliminary results on the use of a wearable inertial system for asse...
The development of lightweight portable sensors and algorithms for the identification of gait events...
© 2019 by the authors. Licensee MDPI, Basel, Switzerland. The validity of results in race walking is...
Due to subjectivity in refereeing, the results of race walking are often questioned. To overcome thi...
Current judging of race walking in international competitions relies on subjective human observation...
This study aims to develop an innovative approach based on a wearable inertial system, which enables...
This paper presents IART, a novel inertial wearable system for automatic detection of infringements ...
We developed and tested an algorithm to automatically classify twenty runners as novice or experienc...
Stumbling during gait is commonly encountered in patients who suffer from mild to serious walking pr...
Nowadays, technology in sport plays an important role to help training and judgement processes. This...
Aim of this study was to validate an inertial system able to detect the loss of ground contact (LOGC...
Aim of this study was to validate an inertial system able to detect the loss of ground contact (LOGC...
The use of inertial sensors for the gait event detection during a long-distance walking, for example...
In this paper we implemented machine learning (ML) and strap-down integration (SDI) methods and anal...
Falls are a serious public health problem and possibly life threatening for people in fall risk grou...
In this work we will show some preliminary results on the use of a wearable inertial system for asse...
The development of lightweight portable sensors and algorithms for the identification of gait events...
© 2019 by the authors. Licensee MDPI, Basel, Switzerland. The validity of results in race walking is...
Due to subjectivity in refereeing, the results of race walking are often questioned. To overcome thi...
Current judging of race walking in international competitions relies on subjective human observation...
This study aims to develop an innovative approach based on a wearable inertial system, which enables...
This paper presents IART, a novel inertial wearable system for automatic detection of infringements ...
We developed and tested an algorithm to automatically classify twenty runners as novice or experienc...
Stumbling during gait is commonly encountered in patients who suffer from mild to serious walking pr...
Nowadays, technology in sport plays an important role to help training and judgement processes. This...
Aim of this study was to validate an inertial system able to detect the loss of ground contact (LOGC...
Aim of this study was to validate an inertial system able to detect the loss of ground contact (LOGC...
The use of inertial sensors for the gait event detection during a long-distance walking, for example...
In this paper we implemented machine learning (ML) and strap-down integration (SDI) methods and anal...
Falls are a serious public health problem and possibly life threatening for people in fall risk grou...
In this work we will show some preliminary results on the use of a wearable inertial system for asse...
The development of lightweight portable sensors and algorithms for the identification of gait events...