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Asynchronous Blob Tracker for Event Cameras

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Event-based cameras are popular for tracking fast-moving objects due to their high temporal resolution, low latency, and high dynamic range. In this paper, we propose a novel algorithm for tracking event blobs using raw events asynchronously in real time. We introduce the concept of an event blob as a spatio-temporal likelihood of event occurrence where the conditional spatial likelihood is blob-like. Many real-world objects such as car headlights or any quickly moving foreground objects generate event blob data. The proposed algorithm uses a nearest neighbour classifier with a dynamic threshold criteria for data association coupled with an extended Kalman filter to track the event blob state. Our algorithm achieves highly accurate blob tracking, velocity estimation, and shape estimation even under challenging lighting conditions and high-speed motions (> 11000 pixels/s). The microsecond time resolution achieved means that the filter output can be used to derive secondary information such as time-to-contact or range estimation, that will enable applications to real-world problems such as collision avoidance in autonomous driving.

Ziwei Wang, Timothy Molloy, Pieter van Goor, Robert Mahony• 2023

Related benchmarks

TaskDatasetResultRank
Rotor-RPM estimationTimestamped Quadcopter with Egomotion (TQE) (4-fold cross-val)
MARE0.9
72
Feature TrackingEC
Feature Age (FA)55.3
14
Feature TrackingEDS
FA47.3
12
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