RoEL: Robust Event-based 3D Line Reconstruction
Gwangtak Bae, Jaeho Shin, Seunggu Kang, Junho Kim, Ayoung Kim, Young Min Kim

TL;DR
This paper introduces RoEL, a robust method for extracting and refining 3D line maps from event camera data, improving mapping and pose estimation in challenging environments.
Contribution
It presents a novel algorithm for stable line tracking from event data and geometric cost functions for 3D line and pose refinement, adaptable to various observations.
Findings
Significant performance boost in event-based mapping and pose refinement.
Robust line extraction across diverse datasets.
Flexible application to multimodal scenarios.
Abstract
Event cameras in motion tend to detect object boundaries or texture edges, which produce lines of brightness changes, especially in man-made environments. While lines can constitute a robust intermediate representation that is consistently observed, the sparse nature of lines may lead to drastic deterioration with minor estimation errors. Only a few previous works, often accompanied by additional sensors, utilize lines to compensate for the severe domain discrepancies of event sensors along with unpredictable noise characteristics. We propose a method that can stably extract tracks of varying appearances of lines using a clever algorithmic process that observes multiple representations from various time slices of events, compensating for potential adversaries within the event data. We then propose geometric cost functions that can refine the 3D line maps and camera poses, eliminating…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Advanced Optical Sensing Technologies · Ferroelectric and Negative Capacitance Devices
