HEAL-SWIN: A Vision Transformer on the Sphere
Paper in proceeding, 2024

High-resolution wide-angle fisheye images are becoming more and more important for robotics applications such as autonomous driving. However, using ordinary convolutional neural networks or vision transformers on this data is problematic due to projection and distortion losses introduced when projecting to a rectangular grid on the plane. We introduce the HEAL-SWIN transformer, which combines the highly uniform Hierarchi-cal Equal Area iso-Latitude Pixelation (HEALPix) grid used in astrophysics and cosmology with the Hierarchical Shifted-Window (SWIN) transformer to yield an efficient and flexible model capable of training on high-resolution, distortion-free spherical data. In HEAL-SWIN, the nested structure of the HEALPix grid is used to perform the patching and windowing operations of the SWIN transformer, enabling the network to process spherical representations with minimal computational overhead. We demonstrate the superior performance of our model on both synthetic and real automotive datasets, as well as a selection of other image datasets, for semantic segmentation, depth regression and classification tasks. Our code is publicly available11https://github.com/JanEGerken/HEAL-SWIN.

semantic segmentation

fisheye images

transformer

image classification

spherical grid

depth estimation

omni-directional images

Author

Oscar Carlsson

Chalmers, Mathematical Sciences, Algebra and geometry

Jan Gerken

Chalmers, Mathematical Sciences, Algebra and geometry

Hampus Linander

Chalmers, Mathematical Sciences, Algebra and geometry

Heiner Spieß

Technische Universität Berlin

Fredrik Ohlsson

Umeå University

Christoffer Petersson

Chalmers, Mathematical Sciences, Algebra and geometry

Zenseact AB

Daniel Persson

Chalmers, Mathematical Sciences, Algebra and geometry

Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition

10636919 (ISSN)

6067-6077
9798350353006 (ISBN)

2024 IEEE/CVF Conference on Computer Vision and Pattern Recognition, CVPR 2024
Seattle, USA,

Subject Categories

Computer Vision and Robotics (Autonomous Systems)

DOI

10.1109/CVPR52733.2024.00580

More information

Latest update

11/6/2024