Monocular Navigation in Large Scale Dynamic Environments

09/07/2017
by   Darius Burschka, et al.
0

We present a processing technique for a robust reconstruction of motion properties for single points in large scale, dynamic environments. We assume that the acquisition camera is moving and that there are other independently moving agents in a large environment, like road scenarios. The separation of direction and magnitude of the reconstructed motion allows for robust reconstruction of the dynamic state of the objects in situations, where conventional binocular systems fail due to a small signal (disparity) from the images due to a constant detection error, and where structure from motion approaches fail due to unobserved motion of other agents between the camera frames. We present the mathematical framework and the sensitivity analysis for the resulting system.

READ FULL TEXT
research
02/10/2020

Multi-object Monocular SLAM for Dynamic Environments

Multibody monocular SLAM in dynamic environments remains a long-standing...
research
04/27/2015

Dynamic Body VSLAM with Semantic Constraints

Image based reconstruction of urban environments is a challenging proble...
research
01/05/2023

Robust Dynamic Radiance Fields

Dynamic radiance field reconstruction methods aim to model the time-vary...
research
09/09/2019

Unified Underwater Structure-from-Motion

This paper shows that accurate underwater 3D shape reconstruction is pos...
research
08/26/2018

Scale Drift Correction of Camera Geo-Localization using Geo-Tagged Images

Camera geo-localization from a monocular video is a fundamental task for...
research
12/21/2016

Trilaminar Multiway Reconstruction Tree for Efficient Large Scale Structure from Motion

Accuracy and efficiency are two key problems in large scale incremental ...
research
09/22/2021

Learning Robust Agents for Visual Navigation in Dynamic Environments: The Winning Entry of iGibson Challenge 2021

This paper presents an approach for improving navigation in dynamic and ...

Please sign up or login with your details

Forgot password? Click here to reset