The monitoring of physical activities and recognition of motion disorders belong to important diagnostical tools in neurology and rehabilitation. The goal of the present paper is in the contribution to this topic by (1) analysis of accelerometric signals recorded by wearable sensors located at specific body positions and by (2) implementation of deep learning methods to classify signal features. This paper uses the general methodology to analysis of accelerometric signals acquired during cycling at different routes followed by the global positioning system. The experimental dataset includes 850 observations that were recorded by a mobile device in the spine area (L3 verterbra) for cycling routes with the different slope. The proposed method...
This paper addresses the use of multichannel signal processing methods in analysis of heart rate cha...
This project aims to evaluate the deep neural network architecture Deep-ConvLSTM to classify locomot...
This manuscript presents an approach to the challenge of biometric identification based on the accel...
Motion analysis is an important topic in the monitoring of physical activities and recognition of ne...
Motion pattern analysis uses methods for the recognition of physical activities recorded by wearable...
This paper presents methodology for the processing of GPS and heart rate signals acquired during lon...
Physical inactivity increases the risk of many adverse health conditions, including the world’s majo...
© 2018, International Association of Computer Science and Information Technology. Human activity rec...
In recent years, significant advancements have taken place in human activity recognition using vario...
This paper addresses the problem of classifying motion signals acquired via wearable sensors for the...
Activity recognition from wearable sensor data has been researched for many years. Previous works us...
Physical activity is a key factor in the treatment of chronic diseases such asdiabetes, cardiovascul...
The evaluation of the effectiveness of different machine learning algorithms on a publicly available...
The evaluation of the effectiveness of different machine learning algorithms on a publicly available...
Human Activity Recognition (HAR) is a key component in smart health in that it is valuable to solve ...
This paper addresses the use of multichannel signal processing methods in analysis of heart rate cha...
This project aims to evaluate the deep neural network architecture Deep-ConvLSTM to classify locomot...
This manuscript presents an approach to the challenge of biometric identification based on the accel...
Motion analysis is an important topic in the monitoring of physical activities and recognition of ne...
Motion pattern analysis uses methods for the recognition of physical activities recorded by wearable...
This paper presents methodology for the processing of GPS and heart rate signals acquired during lon...
Physical inactivity increases the risk of many adverse health conditions, including the world’s majo...
© 2018, International Association of Computer Science and Information Technology. Human activity rec...
In recent years, significant advancements have taken place in human activity recognition using vario...
This paper addresses the problem of classifying motion signals acquired via wearable sensors for the...
Activity recognition from wearable sensor data has been researched for many years. Previous works us...
Physical activity is a key factor in the treatment of chronic diseases such asdiabetes, cardiovascul...
The evaluation of the effectiveness of different machine learning algorithms on a publicly available...
The evaluation of the effectiveness of different machine learning algorithms on a publicly available...
Human Activity Recognition (HAR) is a key component in smart health in that it is valuable to solve ...
This paper addresses the use of multichannel signal processing methods in analysis of heart rate cha...
This project aims to evaluate the deep neural network architecture Deep-ConvLSTM to classify locomot...
This manuscript presents an approach to the challenge of biometric identification based on the accel...