Abstract

Instead of wastefully sending entire images at fixed frame rates, neuromorphic vision sensors only transmits the local pixel-level changes caused by movement in a scene at the time they occur. This results in a stream of events, with a latency in the order of micro-seconds. While these sensors offer tremendous advantages in terms of latency and bandwidth, they require new, adapted approaches to computer vision, due to their unique event-based pixel-level output. In this contribution, we propose an online multi-target tracking system utilizing for neuromorphic vision sensors, which is the first neuromorphic vision system in intelligent transportation systems. In order to track moving targets, a fast and simple object detection algorithm using clustering techniques is developed. To make full use of the low latency, we integrate an online tracking-by-clustering system running at a high frame rate, which far exceeds the real-time capabilities of traditional frame based industry cameras. The performance of the system is evaluated using real world dynamic vision sensor data of a highway bridge scenario. We hope that our attempt will motivate further research on neuromorphic vision sensors for intelligent transportation systems.

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