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Deep Visual Odometry with Events and Frames (2309.09947v3)

Published 18 Sep 2023 in cs.CV

Abstract: Visual Odometry (VO) is crucial for autonomous robotic navigation, especially in GPS-denied environments like planetary terrains. To improve robustness, recent model-based VO systems have begun combining standard and event-based cameras. While event cameras excel in low-light and high-speed motion, standard cameras provide dense and easier-to-track features. However, the field of image- and event-based VO still predominantly relies on model-based methods and is yet to fully integrate recent image-only advancements leveraging end-to-end learning-based architectures. Seamlessly integrating the two modalities remains challenging due to their different nature, one asynchronous, the other not, limiting the potential for a more effective image- and event-based VO. We introduce RAMP-VO, the first end-to-end learned image- and event-based VO system. It leverages novel Recurrent, Asynchronous, and Massively Parallel (RAMP) encoders capable of fusing asynchronous events with image data, providing 8x faster inference and 33% more accurate predictions than existing solutions. Despite being trained only in simulation, RAMP-VO outperforms previous methods on the newly introduced Apollo and Malapert datasets, and on existing benchmarks, where it improves image- and event-based methods by 58.8% and 30.6%, paving the way for robust and asynchronous VO in space.

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Authors (7)
  1. Roberto Pellerito (1 paper)
  2. Marco Cannici (20 papers)
  3. Daniel Gehrig (28 papers)
  4. Joris Belhadj (1 paper)
  5. Olivier Dubois-Matra (2 papers)
  6. Massimo Casasco (2 papers)
  7. Davide Scaramuzza (190 papers)
Citations (1)

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