A Benchmark Environment for Neuromorphic Stereo Vision

Steffen, L. and Elfgen, M. and Ulbrich, S. and Roennau, A. and Dillmann, R. (2021) A Benchmark Environment for Neuromorphic Stereo Vision. Frontiers in Robotics and AI, 8. ISSN 2296-9144

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Abstract

Without neuromorphic hardware, artificial stereo vision suffers from high resource demands and processing times impeding real-time capability. This is mainly caused by high frame rates, a quality feature for conventional cameras, generating large amounts of redundant data. Neuromorphic visual sensors generate less redundant and more relevant data solving the issue of over- and undersampling at the same time. However, they require a rethinking of processing as established techniques in conventional stereo vision do not exploit the potential of their event-based operation principle. Many alternatives have been recently proposed which have yet to be evaluated on a common data basis. We propose a benchmark environment offering the methods and tools to compare different algorithms for depth reconstruction from two event-based sensors. To this end, an experimental setup consisting of two event-based and one depth sensor as well as a framework enabling synchronized, calibrated data recording is presented. Furthermore, we define metrics enabling a meaningful comparison of the examined algorithms, covering aspects such as performance, precision and applicability. To evaluate the benchmark, a stereo matching algorithm was implemented as a testing candidate and multiple experiments with different settings and camera parameters have been carried out. This work is a foundation for a robust and flexible evaluation of the multitude of new techniques for event-based stereo vision, allowing a meaningful comparison.

Item Type: Article
Subjects: Grantha Library > Mathematical Science
Depositing User: Unnamed user with email support@granthalibrary.com
Date Deposited: 28 Jun 2023 05:24
Last Modified: 12 Sep 2024 04:25
URI: http://asian.universityeprint.com/id/eprint/1321

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