
Ylva Jansson
KTH - Royal Institute of Technology
deep learning
scale invariance
scale generalization
convolutional neural networks
spatial transformer networks
invariant recognition
3
presentations
SHORT BIO
Ylva Jansson obtained her M.Sc. from KTH Royal Institute of Technology, Stockholm, Sweden, in 2014. She is currently a PhD student in the Computational Brain Science Lab at the School of Electrical Engineering and Computer Science at KTH Royal Institute of Technology. Her research concerns, in a broader sense, how prior knowledge about the structure of the world can be represented and integrated into modern computer vision algorithms. Specifically this includes applications within video analysis and hybrid approaches in the intersection between biological vision, spatial and spatio-temporal scale-space methods and state-of-the art learning based approaches (deep learning, convolutional neural networks).
Presentations

Exploring the ability of CNNs to generalise to previously unseen scales over wide scale ranges
Tony Lindeberg and 1 other author

Understanding when Spatial Transformer Networksdo not support invariance, and what to do about it
Ylva Jansson

Exploring the ability of CNNs to generalise to previously unseen scales over wide scale ranges
Tony Lindeberg and 1 other author