New job opportunity: Postdoc in Image and Signal Processing

New job opportunity: Postdoc in Image and Signal Processing

The University of Lincoln is seeking to appoint a new Postdoctoral Research Fellows in Image and Signal Processing (Non-contact Measurement of Physiological Cues) to join the Centre…

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New job opportunities: 2 Postdocs in Assistive & Service Robotics

New job opportunities: 2 Postdocs in Assistive & Service Robotics

The University of Lincoln is seeking to appoint 2 new Postdoctoral Research Fellows in Assistive Robotics (Robot Perception for Long-Term Human Activity Monitoring) and Service Robotics (Robot…

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Fully-funded PhD scholarship in Human-Robot Collaboration

Fully-funded PhD scholarship in Human-Robot Collaboration

We have tentatively secured funding for an exciting PhD position (for UK/EU students only I’m afraid) in the area of Robotics. The successful candidate will…

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Fully-funded PhD scholarship for a UK/EU Student in Robotics

Fully-funded PhD scholarship for a UK/EU Student in Robotics

We have tentatively secured funding for an exciting PhD position (for UK/EU students only I’m afraid) in the area of Robotics. The successful candidate will be pursuing a PhD within the Lincoln Centre for Autonomous Systems (L-CAS) under the supervision of Dr Marc Hanheide and Prof Tom Duckett. The project is about long-term adaptation in human-robot collaboration for manufacturing applications
The studentship covers all fees, plus a stipend of £15000 per year for a duration of 3.5 years. The position is part of a recent strategic investment by the University of Lincoln, and only projects that recruit strong candidates will actually be funded. So, we need excellent candidates, ideally with a strong background in AI, Robotics, Mathematics, Engineering, or Machine Learning, to apply for this position to turn this funding opportunity into a real project. 
If you are excited about human-robot collaboration and its potential to change the way we manufacture, apply by sending a covering letter outlining your interest and proposed approach (up to 1 page A4) with an accompanying CV to mhanheide@lincoln.ac.uk by close of day on 18th April 2014
More details below (download the official advert here):
PROJECT DETAILS

Project Title

Facilitating Individualised Collaboration with Robots (FInCoR)

Project Reference

RIF2014S-45

Project Summary

A PhD position is available in the Lincoln Centre for Autonomous Systems Research (L-CAS), a thriving research centre based at the University of Lincoln.

L-CAS is internationally recognised for its applied autonomous systems research, in domains such as manufacturing, agriculture, security, and care. It specialises in the integration of perception, learning, decision-making and control capabilities in autonomous systems such as mobile robots and smart devices.

The Centre benefits from new, modern laboratory facilities, access to state-of-the-art robotic hardware, and offers the successful candidate a strong embedding into existing international research projects with the potential to liaise with highly regarded experts in the field. The candidate will be part of an international and ambitious team, and will benefit from excellent support to produce and disseminate original research contributions.

The PhD position is offered in the area of long-term adaptation and learning for human-robot collaboration. The project will bring together aspects of machine learning, AI and human-robot interaction, all with strong links to real-world application in manufacturing and care.

The successful applicant will be an excellent student with a very good Bachelors or Masters in Computer Science, Electronic Engineering, Mathematics or Physics who is excited about robots and can evidence relevant coding skills (C++/Python/Java/ROS). A background in machine learning, robotics, and/or AI is desirable. The project start date is 1st September 2014.

The FInCoR project will investigate novel ways to facilitate individualised human-robot collaboration through long-term adaptation on the level of joint tasks. This will enable robots to work with human more effectively in scenario such as high value manufacturing and assistive care.

Imagine a robot helping to assemble a car’s dashboard more effectively, knowing that it is working with a left-handed person; or a robot assisting an elderly employee in a car factory who is skilled in fitting a speedometer, but requires a third-hand holding the heavy mounting frame in place. Despite significant progress in human-robot collaboration, today’s robotic systems still lack the ability to adjust to an individual’s needs.

FInCoR will overcome this limitation by developing online, in-situ adaptation, putting the “human in the loop”. It will bring together flexible task representations (eg. Markov Decision Processes), machine learning (eg. reinforcement learning), advanced robot perception (eg. body tracking), and robot control (eg. reactive planning) to make progress from pre-scripted tasks to individualised models. These models account for preferences, abilities, and limitations of each individual human through long-term adaptation. Hence, FInCoR will enable processes known from human-human collaboration, such as two colleagues working together and learning more about each other’s strengths, preferences, and strategies, to take place in human-robot teams. In particular, FInCoR sets out the following objectives:
  • to develop a long-term adaptation framework for task collaboration that is governed by learning signals based on measures of performance, comfort, and ergonomics;
  • to implement the adaptation framework in the de-facto standard for robot software “ROS” to ensure effective dissemination of results and maximise impact;
  • to generate high quality outputs from original research;
  • to explore the potential of individualised adaptation in at least two market domains: high-value manufacturing  and (assistive) care, and 
  • to validate the framework within these domains, with input from international collaboration partners.

Supervisory Team

1. Dr Marc Hanheide, Senior Lecturer, School of Computer Science. http://staff.lincoln.ac.uk/mhanheide

2. Prof Tom Duckett, Professor of Computer Sciences, School of Computer Sciences. http://staff.lincoln.ac.uk/tduckett

Informal Enquiries

For further information on this project please contact Dr Marc Hanheide by email at: mhanheide@lincoln.ac.uk

Eligibility

All Candidates must satisfy the University’s minimum doctoral entry criteria for studentships of an honours degree at Upper Second Class (2:1) or an appropriate Masters degree or equivalent. A minimum IELTS (Academic) score of 7 (or equivalent) is essential for candidates for whom English is not their first language. Funded Studentships are open to both UK/EU students unless otherwise specified.

How to Apply

Please send a covering letter outlining your interest and proposed approach (up to 1 page A4) with an accompanying CV to mhanheide@lincoln.ac.uk by close of day on 18th April 2014.

Candidates will be notified w/c 5th May of the outcome of the process and if invited to interview, these are anticipated to take place w/c 26h May.

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Fully-funded PhD in Mobile Robotics for Ambient Assisted Living

Fully-funded PhD in Mobile Robotics for Ambient Assisted Living

A PhD position is available in the Lincoln Centre for Autonomous Systems Research (L-CAS, http://robots.lincoln.ac.uk ) at the University of Lincoln UK. This 3 ½…

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