A Neuromorphic Vision-Based Measurement for Robust Relative Localization in Future Space Exploration Missions
Mohammed Salah, Mohammed Chehadah, Muhammed Humais, Mohammed Wahbah,, Abdulla Ayyad, Rana Azzam, Lakmal Seneviratne, and Yahya Zweiri

TL;DR
This paper introduces a neuromorphic vision-based measurement system combined with inertial data for robust relative localization in space exploration, specifically aiding Mars rover and helicopter coordination.
Contribution
It presents a novel event-based landmark identification algorithm and fusion methods that improve accuracy and range in relative localization for space missions.
Findings
Outperforms state-of-the-art in accuracy
Demonstrates robustness in various experiments
Extends effective range of localization
Abstract
Space exploration has witnessed revolutionary changes upon landing of the Perseverance Rover on the Martian surface and demonstrating the first flight beyond Earth by the Mars helicopter, Ingenuity. During their mission on Mars, Perseverance Rover and Ingenuity collaboratively explore the Martian surface, where Ingenuity scouts terrain information for rover's safe traversability. Hence, determining the relative poses between both the platforms is of paramount importance for the success of this mission. Driven by this necessity, this work proposes a robust relative localization system based on a fusion of neuromorphic vision-based measurements (NVBMs) and inertial measurements. The emergence of neuromorphic vision triggered a paradigm shift in the computer vision community, due to its unique working principle delineated with asynchronous events triggered by variations of light…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Planetary Science and Exploration · Advanced Memory and Neural Computing
