Search Results for author: Georg Bökman

Found 11 papers, 8 papers with code

DeDoDe v2: Analyzing and Improving the DeDoDe Keypoint Detector

1 code implementation13 Apr 2024 Johan Edstedt, Georg Bökman, Zhenjun Zhao

First, we find that DeDoDe keypoints tend to cluster together, which we fix by performing non-max suppression on the target distribution of the detector during training.

Data Augmentation Key Point Matching +1

Steerers: A framework for rotation equivariant keypoint descriptors

1 code implementation4 Dec 2023 Georg Bökman, Johan Edstedt, Michael Felsberg, Fredrik Kahl

Image keypoint descriptions that are discriminative and matchable over large changes in viewpoint are vital for 3D reconstruction.

3D Reconstruction Data Augmentation

Leveraging Cutting Edge Deep Learning Based Image Matching for Reconstructing a Large Scene from Sparse Images

no code implementations2 Oct 2023 Georg Bökman, Johan Edstedt

We present the top ranked solution for the AISG-SLA Visual Localisation Challenge benchmark (IJCAI 2023), where the task is to estimate relative motion between images taken in sequence by a camera mounted on a car driving through an urban scene.

Image Retrieval Retrieval

Investigating how ReLU-networks encode symmetries

1 code implementation NeurIPS 2023 Georg Bökman, Fredrik Kahl

These experiments are not only of interest for understanding how group equivariance is encoded in ReLU-networks, but they also give a new perspective on Entezari et al.'s permutation conjecture as we find that it is typically easier to merge a network with a group-transformed version of itself than merging two different networks.

RoMa: Robust Dense Feature Matching

1 code implementation24 May 2023 Johan Edstedt, Qiyu Sun, Georg Bökman, Mårten Wadenbäck, Michael Felsberg

The aim is to learn a robust model, i. e., a model able to match under challenging real-world changes.

Key Point Matching regression

In Search of Projectively Equivariant Networks

1 code implementation29 Sep 2022 Georg Bökman, Axel Flinth, Fredrik Kahl

Equivariance of linear neural network layers is well studied.

A case for using rotation invariant features in state of the art feature matchers

1 code implementation21 Apr 2022 Georg Bökman, Fredrik Kahl

The aim of this paper is to demonstrate that a state of the art feature matcher (LoFTR) can be made more robust to rotations by simply replacing the backbone CNN with a steerable CNN which is equivariant to translations and image rotations.

Rigidity Preserving Image Transformations and Equivariance in Perspective

no code implementations31 Jan 2022 Lucas Brynte, Georg Bökman, Axel Flinth, Fredrik Kahl

We characterize the class of image plane transformations which realize rigid camera motions and call these transformations `rigidity preserving'.

6D Pose Estimation using RGB Inductive Bias +1

Azimuthal Rotational Equivariance in Spherical CNNs

no code implementations1 Jan 2021 Carl Toft, Georg Bökman, Fredrik Kahl

In this work, we analyze linear operators from $L^2(S^2) \rightarrow L^2(S^2)$ which are equivariant to azimuthal rotations, that is, rotations around the z-axis.

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