Metadata
Title
Electronics and Instrumentation Group
Category
graduate
UUID
9c04a43b0b2846d18ec116481ccd9b0e
Source URL
https://www.brookes.ac.uk/research/units/tde/groups/electronics-and-instrumentat...
Parent URL
https://www.brookes.ac.uk/engage-and-innovate/consultancy
Crawl Time
2026-03-19T05:17:25+00:00
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# Electronics and Instrumentation Group

**Source**: https://www.brookes.ac.uk/research/units/tde/groups/electronics-and-instrumentation
**Parent**: https://www.brookes.ac.uk/engage-and-innovate/consultancy

Group Leader(s):
[Professor Khaled Hayatleh](https://www.brookes.ac.uk/profiles/staff/khaled-hayatleh)

Contact:

[khayatleh@brookes.ac.uk](mailto:khayatleh@brookes.ac.uk)

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Showing all research info

About us

Leadership

Membership

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[About us](#research-about)
[Leadership](#research-leadership)
[Membership](#research-team)

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## About us

The Electronics and Instrumentation Group is focused on researching highly original and innovative solutions to real-world problems involving information / signal capture and processing. Current projects (amongst others) include:

- MRI image enhancement
- Electrical Impedance Tomography for non-radiation based body imaging
- biomedical signal artefact minimisation using digital signal processing and artificial intelligence techniques
- driver distraction monitoring using computer vision and artificial intelligence
- an artificial intelligence based road sign recognition system for autonomous vehicles
- removal of patient movement generated artefacts in electrocardiogram systems using a novel electrode arrangement

### Part of

- [School of Engineering, Computing and Mathematics](https://www.brookes.ac.uk/about-brookes/structure-and-governance/faculties-and-schools/ecm "School of Engineering, Computing and Mathematics")
- [Centre for Batteries, Electric Vehicles and Electronics](https://www.brookes.ac.uk/research/units/tde/centres/batteries-electric-vehicles-and-electronics)

### Related courses

- [Engineering (MPhil / PhD / Masters by Research / PhD by Published Work / EngD Professional Doctorate)](https://www.brookes.ac.uk/courses/research/engineering)
- [Electronic Engineering BEng (Final Year Direct Entry) (BEng (Hons))](https://www.brookes.ac.uk/courses/undergraduate/electronic-engineering-beng-final-year-entry)

## Leadership

### Professor Khaled Hayatleh

- [+44 (0) 1865 647561](tel:+44 (0) 1865 647561)
- [khayatleh@brookes.ac.uk](mailto:khayatleh@brookes.ac.uk)

Professor of Electronic Engineering

[View profile  for Khaled Hayatleh](https://www.brookes.ac.uk/profiles/staff/khaled-hayatleh)

## Membership

Staff members

- Staff

slide 1 of 1

### Staff

| Name | Role | Email |
| --- | --- | --- |
| [Mohamed Ben-Esmael](https://www.brookes.ac.uk/profiles/staff/mohamed-ben-esmael) | Lecturer in Electronics Engineering | [ben.esmael@brookes.ac.uk](mailto:ben.esmael@brookes.ac.uk) |
| [Dr Nabil Yassine](https://www.brookes.ac.uk/profiles/staff/nabil-yassine) | Senior Lecturer in Electric Vehicles & Postgraduate Engineering Subject Corordinator | [nyassine@brookes.ac.uk](mailto:nyassine@brookes.ac.uk) |

## Key research projects

### Electrical Impedance Mammography

The project is aimed at developing an alternative technique for breast cancer detection based on electrical impedance imaging.

The advantages of an impedance imaging system over traditional X-ray mammography (portability, low cost, little or zero patient discomfort, no known patient risk and no known side effects) make this technology a welcome addition to the tools available in the fight against breast cancer.

The research is devoted to the design, construction and testing of a novel and optimised electrical impedance mammographic sensor which meets all requirements for CE (European Conformity) certification and to the development and adjustment of a computationally efficient image reconstruction algorithm which could be used to detect the size and the location of breast tumours in real time.\

Sensing head of the latest mammographic sensor

Transmission of data from electrodes to the circuit board

Operating principle

Layout of the electrode array of the Mainz EIT device

2D reconstructions

2D reconstructions

3D reconstructions

### Vehicular monitoring for enhanced traffic flow control

We are researching into solutions for traffic monitoring based on the Internet of Things. Low energy sensor nodes, which can be embedded in the road or deployed on the roadside are being developed; and alternative low power radio technologies for backhauling data from these sensor nodes to the cloud are being investigated. This can be used for traffic counting, traffic profiling and also for informing vehicles about road conditions.

### A motion artefact minimisation system for biomedical monitoring equipment

We aim to produce a system to minimise artefacts due to patient/electrode relative motion. This includes, but is not limited to:

- investigating and analysing the causes of artefacts (unwanted signals)
- assessing the current approaches in minimising these artefacts
- designing a system that maximises the signal to noise ratio of ECG signals by subtracting the motion noise signals from the original signal with the help of Strain Gauge sensors to detect the X-plane and Y-plane movements.

### Low power and high signal-to-noise ratio biomedical analog front end design techniques

All medical equipment using electrodes attached to patients requires high-precision, low-power amplifiers (HPLPAs). Without a high level of precision, the captured signals could become distorted, which could possibly lead to misinterpretation and even misdiagnosis.

 Another important consideration is the power consumption. With a growing need for continuous monitoring and hence ‘wearable technologies’, it is very important to minimise power consumption in order to maximise battery life.

This aim of this project is to design and develop a low power, high Common-Mode Rejection Ratio, high signal-to-noise ratio analog front end system for biomedical applications.

### Artificial intelligence techniques for driver fatigue detection

This research is looking at developing a warning system that records the level of driver fatigue and informs the driver when the fatigue levels surpass a threshold - and it becomes dangerous to drive. This is done by monitoring the driver’s blink rate and head tilt. This design has an advantage over existing systems since user feedback will be faster and more accurate.

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