Litcius/Paper detail

Data-Driven Feature Tracking for Event Cameras

Nico Messikommer, Carter Fang, Mathias Gehrig, Davide Scaramuzza

202352 citationsDOI

Abstract

Because of their high temporal resolution, increased resilience to motion blur, and very sparse output, event cameras have been shown to be ideal for low-latency and low-bandwidth feature tracking, even in challenging scenarios. Existing feature tracking methods for event cameras are either handcrafted or derived from first principles but require extensive parameter tuning, are sensitive to noise, and do not generalize to different scenarios due to unmodeled effects. To tackle these deficiencies, we introduce the first data-driven feature tracker for event cameras, which leverages low-latency events to track features detected in a grayscale frame. We achieve robust performance via a novel frame attention module, which shares information across feature tracks. By directly transferring zero-shot from synthetic to real data, our data-driven tracker outperforms existing approaches in relative feature age by up to 120 % while also achieving the lowest latency. This performance gap is further increased to 130 % by adapting our tracker to real data with a novel self-supervision strategy. Multimedia Material A video is available at https://youtu.be/dtkXvNXcWRY and code at https://github.com/uzh-rpg/deep_ev_tracker

Topics & Concepts

Computer scienceArtificial intelligenceComputer visionFeature (linguistics)Latency (audio)Low latency (capital markets)Feature extractionMotion blurFeature trackingVideo trackingTracking (education)Event (particle physics)Frame (networking)Video processingImage (mathematics)PhysicsPedagogyPhilosophyLinguisticsTelecommunicationsQuantum mechanicsComputer networkPsychologyAdvanced Memory and Neural ComputingFerroelectric and Negative Capacitance DevicesElectronic and Structural Properties of Oxides
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