CVMar 1, 2021

DF-VO: What Should Be Learnt for Visual Odometry?

arXiv:2103.00933v160 citationsHas Code
Originality Incremental advance
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This addresses scale-drift and accuracy issues in visual odometry for robotics and autonomous systems, representing a hybrid improvement over existing methods.

The paper tackles the problem of monocular visual odometry being vulnerable to dynamic and low-texture scenes and suffering from scale-drift, by integrating multi-view geometry and deep learning on depth and optical flow, resulting in state-of-the-art performance with a translation error of 1.652% on the KITTI benchmark compared to ORB-SLAM's 3.247%.

Multi-view geometry-based methods dominate the last few decades in monocular Visual Odometry for their superior performance, while they have been vulnerable to dynamic and low-texture scenes. More importantly, monocular methods suffer from scale-drift issue, i.e., errors accumulate over time. Recent studies show that deep neural networks can learn scene depths and relative camera in a self-supervised manner without acquiring ground truth labels. More surprisingly, they show that the well-trained networks enable scale-consistent predictions over long videos, while the accuracy is still inferior to traditional methods because of ignoring geometric information. Building on top of recent progress in computer vision, we design a simple yet robust VO system by integrating multi-view geometry and deep learning on Depth and optical Flow, namely DF-VO. In this work, a) we propose a method to carefully sample high-quality correspondences from deep flows and recover accurate camera poses with a geometric module; b) we address the scale-drift issue by aligning geometrically triangulated depths to the scale-consistent deep depths, where the dynamic scenes are taken into account. Comprehensive ablation studies show the effectiveness of the proposed method, and extensive evaluation results show the state-of-the-art performance of our system, e.g., Ours (1.652%) v.s. ORB-SLAM (3.247%}) in terms of translation error in KITTI Odometry benchmark. Source code is publicly available at: \href{https://github.com/Huangying-Zhan/DF-VO}{DF-VO}.

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