On-Manifold Preintegration for Real-Time Visual--Inertial Odometry
TL;DR: In this paper, a preintegrated inertial measurement unit model is integrated into a visual-inertial pipeline under the unifying framework of factor graphs, which enables the application of incremental-smoothing algorithms and the use of a structureless model for visual measurements, which avoids optimizing over the 3-D points, further accelerating the computation.
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Abstract: Current approaches for visual--inertial odometry (VIO) are able to attain highly accurate state estimation via nonlinear optimization. However, real-time optimization quickly becomes infeasible as the trajectory grows over time; this problem is further emphasized by the fact that inertial measurements come at high rate, hence, leading to the fast growth of the number of variables in the optimization. In this paper, we address this issue by preintegrating inertial measurements between selected keyframes into single relative motion constraints. Our first contribution is a preintegration theory that properly addresses the manifold structure of the rotation group. We formally discuss the generative measurement model as well as the nature of the rotation noise and derive the expression for the maximum a posteriori state estimator. Our theoretical development enables the computation of all necessary Jacobians for the optimization and a posteriori bias correction in analytic form. The second contribution is to show that the preintegrated inertial measurement unit model can be seamlessly integrated into a visual--inertial pipeline under the unifying framework of factor graphs. This enables the application of incremental-smoothing algorithms and the use of a structureless model for visual measurements, which avoids optimizing over the 3-D points, further accelerating the computation. We perform an extensive evaluation of our monocular VIO pipeline on real and simulated datasets. The results confirm that our modeling effort leads to an accurate state estimation in real time, outperforming state-of-the-art approaches.
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Citations
Convergence and Consistency Analysis for a 3-D Invariant-EKF SLAM
Teng Zhang,Kanzhi Wu,Jingwei Song,Shoudong Huang,Gamini Dissanayake +4 more
- 10 Jan 2017
TL;DR: Investigation of the convergence and consistency properties of an invariant-extended Kalman filter based simultaneous localization and mapping (SLAM) algorithm proves that the output of RI-EKF is invariant under any stochastic rigid body transformation, and implications of these invariance properties on the consistency of the estimator are discussed.
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A Survey on Deep Learning for Localization and Mapping: Towards the Age of Spatial Machine Intelligence
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Selective Sensor Fusion for Neural Visual-Inertial Odometry
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TL;DR: In this article, the authors propose an end-to-end selective sensor fusion framework for monocular VIO, which fuses monocular images and inertial measurements in order to estimate the trajectory whilst improving robustness to real-life issues, such as missing and corrupted data or bad sensor synchronization.
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Marco Karrer,Patrik Schmuck,Margarita Chli +2 more
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TL;DR: Thoroughly analyzing CVI-SLAM, it is attest to its accuracy and the improvements arising from the collaboration, and its scalability in the number of participating agents and applicability in terms of network requirements is evaluated.
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Sharmin Rahman,Alberto Quattrini Li,Ioannis Rekleitis +2 more
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TL;DR: This paper addresses drift and loss of localization – one of the main problems affecting other packages in underwater domain – by providing a robust initialization method to refine scale using depth measurements, a fast preprocessing step to enhance the image quality, and a real-time loop-closing and relocalization method using bag of words (BoW).
130
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