An End to End Network Architecture for Fundamental Matrix Estimation

10/29/2020
by   Yesheng Zhang, et al.
10

In this paper, we present a novel end-to-end network architecture to estimate fundamental matrix directly from stereo images. To establish a complete working pipeline, different deep neural networks in charge of finding correspondences in images, performing outlier rejection and calculating fundamental matrix, are integrated into an end-to-end network architecture. To well train the network and preserve geometry properties of fundamental matrix, a new loss function is introduced. To evaluate the accuracy of estimated fundamental matrix more reasonably, we design a new evaluation metric which is highly consistent with visualization result. Experiments conducted on both outdoor and indoor data-sets show that this network outperforms traditional methods as well as previous deep learning based methods on various metrics and achieves significant performance improvements.

READ FULL TEXT

page 10

page 12

page 13

research
10/03/2018

Deep Fundamental Matrix Estimation without Correspondences

Estimating fundamental matrices is a classic problem in computer vision....
research
03/07/2021

RFN-Nest: An end-to-end residual fusion network for infrared and visible images

In the image fusion field, the design of deep learning-based fusion meth...
research
06/02/2023

Two-View Geometry Scoring Without Correspondences

Camera pose estimation for two-view geometry traditionally relies on RAN...
research
05/13/2020

3D Scene Geometry-Aware Constraint for Camera Localization with Deep Learning

Camera localization is a fundamental and key component of autonomous dri...
research
11/27/2022

GRelPose: Generalizable End-to-End Relative Camera Pose Regression

This paper proposes a generalizable, end-to-end deep learning-based meth...
research
04/03/2019

Rep the Set: Neural Networks for Learning Set Representations

In several domains, data objects can be decomposed into sets of simpler ...
research
03/30/2016

LIFT: Learned Invariant Feature Transform

We introduce a novel Deep Network architecture that implements the full ...

Please sign up or login with your details

Forgot password? Click here to reset