Drift Reduction for Monocular Visual Odometry of Intelligent Vehicles Using Feedforward Neural Networks

Wagih, Hassan; Osman, Mostafa; Awad, Mohammed I.; hammad, sherif;

Abstract


In this paper, an approach for reducing the drift in monocular visual odometry algorithms is proposed based on a feedforward neural network. A visual odometry algorithm computes the incremental motion of the vehicle between the successive camera frames, then integrates these increments to determine the pose of the vehicle. The proposed neural network reduces the errors in the pose estimation of the vehicle which results from the inaccuracies in features detection and matching, camera intrinsic parameters, and so on. These inaccuracies are propagated to the motion estimation of the vehicle causing larger amounts of estimation errors. The drift reducing neural network identifies such errors based on the motion of features in the successive camera frames leading to more accurate incremental motion estimates. The proposed drift reducing neural network is trained and validated using the KITTI dataset and the results show the efficacy of the proposed approach in reducing the errors in the incremental orientation estimation, thus reducing the overall error in the pose estimation.


Other data

Title Drift Reduction for Monocular Visual Odometry of Intelligent Vehicles Using Feedforward Neural Networks
Authors Wagih, Hassan; Osman, Mostafa; Awad, Mohammed I.; hammad, sherif 
Issue Date 1-Jan-2022
Journal IEEE Conference on Intelligent Transportation Systems Proceedings ITSC 
ISBN [9781665468800]
DOI 10.1109/ITSC55140.2022.9921796
Scopus ID 2-s2.0-85141817946

Recommend this item

Similar Items from Core Recommender Database

Google ScholarTM

Check



Items in Ain Shams Scholar are protected by copyright, with all rights reserved, unless otherwise indicated.