Javascript must be enabled to continue!
A Real-Time Kinect Signature-Based Patient Home Monitoring System
View through CrossRef
Assessment of body kinematics during performance of daily life activities at home plays a significant role in medical condition monitoring of elderly people and patients with neurological disorders. The affordable and non-wearable Microsoft Kinect (“Kinect”) system has been recently used to estimate human subject kinematic features. However, the Kinect suffers from a limited range and angular coverage, distortion in skeleton joints’ estimations, and erroneous multiplexing of different subjects’ estimations to one. This study addresses these limitations by incorporating a set of features that create a unique “Kinect Signature”. The Kinect Signature enables identification of different subjects in the scene, automatically assign the kinematics feature estimations only to the subject of interest, and provide information about the quality of the Kinect-based estimations. The methods were verified by a set of experiments, which utilize real-time scenarios commonly used to assess motor functions in elderly subjects and in subjects with neurological disorders. The experiment results indicate that the skeleton based Kinect Signature features can be used to identify different subjects in high accuracy. We demonstrate how these capabilities can be used to assign the Kinect estimations to the Subject of Interest, and exclude low quality tracking features. The results of this work can help in establishing reliable kinematic features, which can assist in future to obtain objective scores for medical analysis of patient condition at home while not restricted to perform daily life activities.
Title: A Real-Time Kinect Signature-Based Patient Home Monitoring System
Description:
Assessment of body kinematics during performance of daily life activities at home plays a significant role in medical condition monitoring of elderly people and patients with neurological disorders.
The affordable and non-wearable Microsoft Kinect (“Kinect”) system has been recently used to estimate human subject kinematic features.
However, the Kinect suffers from a limited range and angular coverage, distortion in skeleton joints’ estimations, and erroneous multiplexing of different subjects’ estimations to one.
This study addresses these limitations by incorporating a set of features that create a unique “Kinect Signature”.
The Kinect Signature enables identification of different subjects in the scene, automatically assign the kinematics feature estimations only to the subject of interest, and provide information about the quality of the Kinect-based estimations.
The methods were verified by a set of experiments, which utilize real-time scenarios commonly used to assess motor functions in elderly subjects and in subjects with neurological disorders.
The experiment results indicate that the skeleton based Kinect Signature features can be used to identify different subjects in high accuracy.
We demonstrate how these capabilities can be used to assign the Kinect estimations to the Subject of Interest, and exclude low quality tracking features.
The results of this work can help in establishing reliable kinematic features, which can assist in future to obtain objective scores for medical analysis of patient condition at home while not restricted to perform daily life activities.
Related Results
Increased life expectancy of heart failure patients in a rural center by a multidisciplinary program
Increased life expectancy of heart failure patients in a rural center by a multidisciplinary program
Abstract
Funding Acknowledgements
Type of funding sources: None.
INTRODUCTION Patients with heart failure (HF)...
Autonomy on Trial
Autonomy on Trial
Photo by CHUTTERSNAP on Unsplash
Abstract
This paper critically examines how US bioethics and health law conceptualize patient autonomy, contrasting the rights-based, individualist...
Prostor doma u hrvatskim igranim filmovima s temom domovinskog rata
Prostor doma u hrvatskim igranim filmovima s temom domovinskog rata
The dissertation explores the formation of domestic space in contemporary Croatian society through its presentations in the medium of feature films. The cinematic domestic spaces a...
Use of the Azure Kinect to measure foot clearance during obstacle crossing
Use of the Azure Kinect to measure foot clearance during obstacle crossing
Abstract
Obstacle crossing is a typical adaptive locomotion known to be related to the risk of falls. Previous conventional studies have used elaborate and costly o...
Validation of Foot Placement Locations from Ankle Data of a Kinect v2 Sensor
Validation of Foot Placement Locations from Ankle Data of a Kinect v2 Sensor
The Kinect v2 sensor may be a cheap and easy to use sensor to quantify gait in clinical settings, especially when applied in set-ups integrating multiple Kinect sensors to increase...
Everyday Life in the "Tourist Zone"
Everyday Life in the "Tourist Zone"
This article makes a case for the everyday while on tour and argues that the ability to continue with everyday routines and social relationships, while at the same time moving thro...
Primary PCI: a reasonable treatment for STEMI care during the COVID-19 pandemic
Primary PCI: a reasonable treatment for STEMI care during the COVID-19 pandemic
Abstract
Funding Acknowledgements
Type of funding sources: None.
Introduction
...
P-723 Egg-conomized frozen embryo transfer
P-723 Egg-conomized frozen embryo transfer
Abstract
Study question
Is home-based monitoring of ovulation cost effective compared with hospital-controlled ovulation in wome...

