Frequency-domain Event-based Imaging for Selective Surveillance
Megan Birch, James Rick, Adrish Kar, Jason Zutty, and Joseph L. Greene

TL;DR
The paper introduces FRIES, a frequency-based neuromorphic framework for event cameras that detects and discriminates moving objects like drones and rotors by analyzing periodic signals in event data.
Contribution
FRIES is a novel frequency-domain processing method that enhances event-based surveillance by identifying structured targets through spectral analysis and phase-coherent visualization.
Findings
Successfully detected rotor and drone frequencies in indoor experiments.
Demonstrated drone detection against complex outdoor backgrounds.
Showed frequency analysis improves target discrimination in event-based surveillance.
Abstract
Event-based cameras (EBCs) are an attractive sensing modality for surveillance due to their reporting of pixel-level radiance changes with microsecond resolution and high dynamic range, enabling motion extraction while suppressing background. Their asynchronous, sparse output, however, necessitate algorithms that identify targets in event-space without processing full frames. We introduce Frequency Rate Information for Event Space (FRIES), a neuromorphic processing framework that detects periodicity in events, such as rotor rotation and mechanical vibrations, to discriminate and monitor man-made objects. FRIES first applies a time gate to suppress background and noise, then aggregates events into a pixel-wise activity (e.g., density) map and clusters pixels into regions-of-interest (ROIs). A localized spectral analysis is applied to each ROI to extract dominant frequencies used to…
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