PhD student position in Machine Learning: Theoretically motivated deep learning

At the Division of Computational Science and Technology at KTH we are seeking a 
new PhD student in Machine Learning / Computer Vision to handle scale-dependent 
information in image data.

In our research, we develop deep networks for processing image data that handle 
scaling transformations and other image transformations in a theoretically 
well-founded manner. Our research in this area comprises both theoretical 
modelling of the influence of image transformations on different architectures 
for deep networks as well as experimental evaluations of such networks on 
benchmark datasets to explore their properties. The work also comprises the 
creation of new benchmark datasets, to enable characterization of properties of 
deep networks that are not covered by existing datasets.

For examples of our previous work in this area, see
https://www.kth.se/profile/tony/page/deep-networks

Within the scope of this PhD student position, you will work on and contribute 
to the research frontier regarding scale-covariant or scale-equivariant deep 
networks and/or deep networks parameterised in terms of Gaussian derivatives, 
on specific research topics that we choose together within the scope of the 
research project ”Covariant and invariant deep networks” that finances this 
position. The overall goal is to develop new architectures for deep networks 
that can generalise to scaling variations that are not spanned by the training 
data, and which can achieve higher robustness to variabilities in test data, as 
well as enable more efficient training with lower requirements concerning the 
amount of training data.

The candidate should have very good knowledge in mathematics (analysis and 
linear systems, which we use for modelling convolution transformations and 
geometric image transformations) as well as in structured programming to write 
code that is easy to use for making experiments with, maintain and develop and 
share with colleagues. You must have very good knowledge about programming deep 
networks in Python, PyTorch is meritorious.

Knowledge in computer vision and image analysis is strongly meritorious.

For further information and information about how to apply, see

https://www.kth.se/en/om/work-at-kth/lediga-jobb/what:job/jobID:567595/where:4/


[cid:[email protected]]


Tony Lindeberg
Professor of Computer Science — Computational Vision

KTH Royal Institute of Technology
Computational Brain Science Lab
Division of Computational Science and Technology, CST
SE-100 44 Stockholm, Sweden

Phone: +46 8 790 6205
https://www.kth.se/profile/tony/

Reply via email to