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VECtor: A Versatile Event-Centric Benchmark for Multi-Sensor SLAM

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arxiv 2207.01404 v1 pith:6RBVSI5E submitted 2022-07-04 cs.RO cs.CV

VECtor: A Versatile Event-Centric Benchmark for Multi-Sensor SLAM

classification cs.RO cs.CV
keywords benchmarkcameramulti-sensorsequencesslamaccuratecamerascaptured
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Event cameras have recently gained in popularity as they hold strong potential to complement regular cameras in situations of high dynamics or challenging illumination. An important problem that may benefit from the addition of an event camera is given by Simultaneous Localization And Mapping (SLAM). However, in order to ensure progress on event-inclusive multi-sensor SLAM, novel benchmark sequences are needed. Our contribution is the first complete set of benchmark datasets captured with a multi-sensor setup containing an event-based stereo camera, a regular stereo camera, multiple depth sensors, and an inertial measurement unit. The setup is fully hardware-synchronized and underwent accurate extrinsic calibration. All sequences come with ground truth data captured by highly accurate external reference devices such as a motion capture system. Individual sequences include both small and large-scale environments, and cover the specific challenges targeted by dynamic vision sensors.

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