Homography-Based Loss Function for Camera Pose Regression

05/04/2022
by   Clémentin Boittiaux, et al.
6

Some recent visual-based relocalization algorithms rely on deep learning methods to perform camera pose regression from image data. This paper focuses on the loss functions that embed the error between two poses to perform deep learning based camera pose regression. Existing loss functions are either difficult-to-tune multi-objective functions or present unstable reprojection errors that rely on ground truth 3D scene points and require a two-step training. To deal with these issues, we introduce a novel loss function which is based on a multiplane homography integration. This new function does not require prior initialization and only depends on physically interpretable hyperparameters. Furthermore, the experiments carried out on well established relocalization datasets show that it minimizes best the mean square reprojection error during training when compared with existing loss functions.

READ FULL TEXT

page 1

page 2

research
04/02/2017

Geometric Loss Functions for Camera Pose Regression with Deep Learning

Deep learning has shown to be effective for robust and real-time monocul...
research
04/28/2019

Improving Image-Based Localization with Deep Learning: The Impact of the Loss Function

This work formulates a novel loss term which can be appended to an RGB o...
research
02/10/2023

CGA-PoseNet: Camera Pose Regression via a 1D-Up Approach to Conformal Geometric Algebra

We introduce CGA-PoseNet, which uses the 1D-Up approach to Conformal Geo...
research
04/06/2022

Analysis of Different Losses for Deep Learning Image Colorization

Image colorization aims to add color information to a grayscale image in...
research
09/30/2018

Nth Absolute Root Mean Error

Neural network training process takes long time when the size of trainin...
research
03/06/2018

The Contextual Loss for Image Transformation with Non-Aligned Data

Feed-forward CNNs trained for image transformation problems rely on loss...
research
06/28/2019

Learning Effective Loss Functions Efficiently

We consider the problem of learning a loss function which, when minimize...

Please sign up or login with your details

Forgot password? Click here to reset