TL;DR
This paper introduces a real-time stereo event-based visual odometry system that leverages asynchronous brightness change data for robust, high-speed, and high dynamic range scene understanding, suitable for robotics applications.
Contribution
It presents a novel parallel tracking-and-mapping approach specifically designed for stereo event-based cameras, emphasizing principled and efficient 3D reconstruction and pose estimation.
Findings
Successfully operates in real-time on standard CPU
Performs well in low-light and high dynamic range conditions
Demonstrates versatility in natural scenes with 6-DoF motion
Abstract
Event-based cameras are bio-inspired vision sensors whose pixels work independently from each other and respond asynchronously to brightness changes, with microsecond resolution. Their advantages make it possible to tackle challenging scenarios in robotics, such as high-speed and high dynamic range scenes. We present a solution to the problem of visual odometry from the data acquired by a stereo event-based camera rig. Our system follows a parallel tracking-and-mapping approach, where novel solutions to each subproblem (3D reconstruction and camera pose estimation) are developed with two objectives in mind: being principled and efficient, for real-time operation with commodity hardware. To this end, we seek to maximize the spatio-temporal consistency of stereo event-based data while using a simple and efficient representation. Specifically, the mapping module builds a semi-dense 3D map…
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