ROCVSep 21, 2025

Event-Based Visual Teach-and-Repeat via Fast Fourier-Domain Cross-Correlation

arXiv:2509.17287v1h-index: 5
Originality Incremental advance
AI Analysis

This addresses real-time responsiveness for robotic navigation, though it is incremental as it adapts existing methods to event cameras.

The paper tackled the latency limitation in visual teach-and-repeat navigation by developing the first event-camera-based system, achieving processing rates over 300Hz and autonomous navigation across 4000+ meters with ATEs below 24 cm.

Visual teach-and-repeat navigation enables robots to autonomously traverse previously demonstrated paths by comparing current sensory input with recorded trajectories. However, conventional frame-based cameras fundamentally limit system responsiveness: their fixed frame rates (typically 30-60 Hz) create inherent latency between environmental changes and control responses. Here we present the first event-camera-based visual teach-and-repeat system. To achieve this, we develop a frequency-domain cross-correlation framework that transforms the event stream matching problem into computationally efficient Fourier space multiplications, capable of exceeding 300Hz processing rates, an order of magnitude faster than frame-based approaches. By exploiting the binary nature of event frames and applying image compression techniques, we further enhance the computational speed of the cross-correlation process without sacrificing localization accuracy. Extensive experiments using a Prophesee EVK4 HD event camera mounted on an AgileX Scout Mini robot demonstrate successful autonomous navigation across 4000+ meters of indoor and outdoor trajectories. Our system achieves ATEs below 24 cm while maintaining consistent high-frequency control updates. Our evaluations show that our approach achieves substantially higher update rates compared to conventional frame-based systems, underscoring the practical viability of event-based perception for real-time robotic navigation.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes