Deep Fundamental Matrix Estimation without Correspondences

10/03/2018
by   Omid Poursaeed, et al.
1

Estimating fundamental matrices is a classic problem in computer vision. Traditional methods rely heavily on the correctness of estimated key-point correspondences, which can be noisy and unreliable. As a result, it is difficult for these methods to handle image pairs with large occlusion or significantly different camera poses. In this paper, we propose novel neural network architectures to estimate fundamental matrices in an end-to-end manner without relying on point correspondences. New modules and layers are introduced in order to preserve mathematical properties of the fundamental matrix as a homogeneous rank-2 matrix with seven degrees of freedom. We analyze performance of the proposed models using various metrics on the KITTI dataset, and show that they achieve competitive performance with traditional methods without the need for extracting correspondences.

READ FULL TEXT
research
10/29/2020

An End to End Network Architecture for Fundamental Matrix Estimation

In this paper, we present a novel end-to-end network architecture to est...
research
10/06/2015

On the Existence of Epipolar Matrices

This paper considers the foundational question of the existence of a fun...
research
06/02/2023

Two-View Geometry Scoring Without Correspondences

Camera pose estimation for two-view geometry traditionally relies on RAN...
research
06/10/2020

Separable Four Points Fundamental Matrix

We present an approach for the computation of the fundamental matrix bas...
research
07/21/2014

Certifying the Existence of Epipolar Matrices

Given a set of point correspondences in two images, the existence of a f...
research
11/24/2021

Space-Partitioning RANSAC

A new algorithm is proposed to accelerate RANSAC model quality calculati...
research
04/14/2015

Clustering Assisted Fundamental Matrix Estimation

In computer vision, the estimation of the fundamental matrix is a basic ...

Please sign up or login with your details

Forgot password? Click here to reset