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Tony Lindeberg

Researcher at Royal Institute of Technology

Publications -  169
Citations -  17027

Tony Lindeberg is an academic researcher from Royal Institute of Technology. The author has contributed to research in topics: Scale space & Scale (ratio). The author has an hindex of 50, co-authored 165 publications receiving 16241 citations. Previous affiliations of Tony Lindeberg include Microsoft.

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The problems with using STNs to align CNN feature maps

TL;DR: In this article, the authors argue that spatial transformer networks do not have the ability to align the feature maps of a transformed image and its original, and they advocate taking advantage of more complex features in deeper layers by instead sharing parameters between the classification and the localisation network.
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Covariance properties under natural image transformations for the generalised Gaussian derivative model for visual receptive fields

TL;DR: In this paper , a generalised Gaussian derivative model of receptive fields in the primary visual cortex and the lateral geniculate nucleus is proposed, which enables geometric invariance properties at higher levels in the visual hierarchy.

Analysis of Brain Activation Patterns Using A 3-D Scale-Space Primal Sketch

TL;DR: How the scale‐space primal sketch can be used for automatic determination of the spatial extent and the significance of rCBF changes is shown, and a hierarchical nested tree structure of activated regions and subregions is obtained.
Journal ArticleDOI

Surface model generation and segmentation of the human cerebral cortex for the construction of unfolded cortical maps

TL;DR: Having a solely surface based representation of the cortex and expressing the image operations using multi-scale differential invariants in terms of scale-space derivatives as done in this work is a natural choice both in Terms of conceptual and algorithmic simplicity.

The problems with using STNs to align CNN feature maps.

TL;DR: A theoretical argument for this and the practical implications are investigated, showing that this inability to align the feature maps of a transformed image and its original is coupled with decreased classification accuracy.