Event-based vision for egomotion estimation using precise event timing
Greatorex, Hugh, Mastella, Michele, Cotteret, Madison, Richter, Ole, Chicca, Elisabetta
–arXiv.org Artificial Intelligence
--Egomotion estimation is crucial for applications such as autonomous navigation and robotics, where accurate and real-time motion tracking is required. However, traditional methods relying on inertial sensors are highly sensitive to external conditions, and suffer from drifts leading to large inaccuracies over long distances. Vision-based methods, particularly those util-ising event-based vision sensors, provide an efficient alternative by capturing data only when changes are perceived in the scene. In this work, we propose a fully event-based pipeline for egomotion estimation that processes the event stream directly within the event-based domain. This method eliminates the need for frame-based intermediaries, allowing for low-latency and energy-efficient motion estimation. We construct a shallow spiking neural network using a synaptic gating mechanism to convert precise event timing into bursts of spikes. These spikes encode local optical flow velocities, and the network provides an event-based readout of egomotion. We evaluate the network's performance on a dedicated chip, demonstrating strong potential for low-latency, low-power motion estimation. Additionally, simulations of larger networks show that the system achieves state-of-the-art accuracy in egomotion estimation tasks with event-based cameras, making it a promising solution for real-time, power-constrained robotics applications. The estimation of egomotion plays an important role in applications such as autonomous navigation, robotics and Augmented Reality (AR).
arXiv.org Artificial Intelligence
Jan-20-2025
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