PhD Studentship: Signal and Image Processing for Art Investigation

Duration of study: Full Time- three years fixed term
Starting date: 1st October 2018
Application deadline: 31st July 2017 (or until filled)
Supervisor: Dr Miguel Rodrigues

A fully-funded three-years PhD studentship is available to Home UK / EU 
students to work on ‘Signal and Image Processing for Art Investigation’ within 
the context of a recently funded EPSRC project “ARTICT | Art Through the ICT 
Lens” (http://gow.epsrc.ac.uk/NGBOViewGrant.aspx?GrantRef=EP/R032785/1). The 
student will work under the supervision of Dr. Miguel Rodrigues within the 
Department of Electronic and Electrical Engineering, University College London 
and will be working with the goal to develop new signal processing, image 
processing, and machine learning tools for art investigation, conservation, and 
presentation. Collaboration opportunities are also envisioned with the project 
partners, such as the National Gallery, London. The PhD student will also have 
the opportunity to intern with the group of project partner Professor Ingrid 
Daubechies, Duke University, in order to develop the research work further.

The cultural heritage sector is experiencing a digital revolution driven by the 
increasing availability of cutting-edge analytical and imaging techniques 
generating large multidimensional datasets. These techniques include (a) macro 
X-Ray Fluorescence (MA-XRF) scanning (b) Hyper-Spectral Imaging (HSI) and (c) 
traditional (digital) imaging such as X-Ray Radiography (XRR) and Infrared 
Imaging (IRR). This wealth of digital data (e.g. HSI datasets contain up to 600 
Gb/m2) has the potential to support the technical study, conservation, 
preservation, or presentation of artwork within cultural heritage institutions. 
For example, it is suggested that the availability of complementary datasets, 
such as MA-XRF and HSI, can support the discovery, characterization and 
visualization of features of interest within the stratigraphy of paintings, 
including (1) preparatory sketches, (2) pentimenti, (3) concealed earlier 
designs, (4) later overpaint and retouchings, or, importantly, (5) the use of 
particular materials and pigments in different paint passages. However, the 
inability of traditional (primarily manual) approaches to adequately 
interrogate such large datasets calls for new algorithms to make sense of 
cultural heritage data. The PhD student will develop new signal processing, 
image processing, and machine learning algorithms to address relevant data 
processing tasks arising in art investigation such as the visualization of the 
various painting layers associated with a painting.

Applicants must hold, or be near completion of a first or upper-second class 
degree in Engineering, Computer Science, or a related subject. The ideal 
candidate will show understanding of signal processing, image processing, 
machine learning, and computer programming. The candidate must also show a 
strong interest to engage in innovative high profile research. Fluent English 
is also required.

Also, the candidate is expected to:
• Have excellent analytical and engineering skills
• Have excellent reporting and communication skills
• Be self-motivated, independent and team player
• Have genuine enthusiasm for the subject and technology
• Have the willingness to author and publish research findings in international 
high-profile journals
• Be eligible for home studentship 
(https://www.epsrc.ac.uk/skills/students/help/eligibility/)

The studentship is available for three years and covers tuition fees at the UK 
rate, plus a stipend at £16,777 pa (tax free).

Informal enquiries should be addressed to Dr Miguel Rodrigues 
([email protected]) by 31st July 2018 (or until filled).

Formal applications should be submitted with a CV, a brief statement of your 
research interests, and with names and email addresses of two referees.

__________________________________
Dr Catherine Higgitt

Principal Scientist
Scientific Department
National Gallery
Trafalgar Square
London
WC2N 5DN
e. [email protected]

[The National Gallery, Trafalgar Square, London WC2N 
5DN]<http://www.nationalgallery.org.uk>
[“The]<https://www.nationalgallery.org.uk/whats-on/exhibitions/the-credit-suisse-exhibition-monet-architecture>
******
Unsubscribe by sending a message to [email protected]
Searchable archives: http://cool.conservation-us.org/byform/mailing-lists/cdl/

Reply via email to