Use this URL to cite or link to this record in EThOS: https://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.750667
Title: Enhancing livestock and human health monitoring via analysis of electronic sensor data
Author: Sarkar, Shikha
ISNI:       0000 0004 7425 3270
Awarding Body: University of Strathclyde
Current Institution: University of Strathclyde
Date of Award: 2018
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Abstract:
This thesis presents a body of work involving novel algorithms for enhancing the effectiveness of low-cost sensors in monitoring applications. A holistic approach has been taken in this work in that modelling, simulation, and monitoring tools have been developed from scratch with a number of novel ideas. As its first contribution, the thesis presents a new simulation tool, WSNSIM - a tool for performance analysis of wireless sensor networks (WSN) formed by sensor nodes deployed on farm animals for monitoring of health and oestrus. In this application of wireless sensor networks, the mobility and herding patterns are modelled using statistical tools such as the Gamma density function, mean index of adequacy (MIA), exponential distribution, K-means clustering etc. to give rise to network simulation that is based on accurate herd behaviour. The simulation results are used in evaluation of novel protocol ideas customized to the needs of farm monitoring. The paper [153] presents a new simulation tool for performance analysis of wireless sensor networks (WSN) deployed on farm animals. The second and third key contributions of the thesis investigate monitoring of human body joints for the purpose of gait and upper limb motion assessment. Unlike the standard approach of marker-based joint monitoring for motion assessment, this work investigates the viability of the Kinect sensor for joint motion monitoring. To this end, two novel tools are developed that incorporate statistical, image processing and computer vision algorithms. The first tool GLSKEL is an intuitive 3D interface and kinematics model for continuous motion capture and analysis of human gait that can be useful for clinical practitioners. The second tool, JAFAKEC helps with tracking and calculation of joint angles based on point cloud data. This functionality can be very helpful for monitoring of the gait and arm motions of mobility-impaired patients using the Kinect sensor. This thesis also details the mathematical methods and algorithms applied on the point cloud to improve accuracy of the joint angle calculation.
Supervisor: Stankovic, Lina ; Andonovic, Ivan Sponsor: Not available
Qualification Name: Thesis (Ph.D.) Qualification Level: Doctoral
EThOS ID: uk.bl.ethos.750667  DOI:
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