Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Deep Event Visual Odometry

About

Event cameras offer the exciting possibility of tracking the camera's pose during high-speed motion and in adverse lighting conditions. Despite this promise, existing event-based monocular visual odometry (VO) approaches demonstrate limited performance on recent benchmarks. To address this limitation, some methods resort to additional sensors such as IMUs, stereo event cameras, or frame-based cameras. Nonetheless, these additional sensors limit the application of event cameras in real-world devices since they increase cost and complicate system requirements. Moreover, relying on a frame-based camera makes the system susceptible to motion blur and HDR. To remove the dependency on additional sensors and to push the limits of using only a single event camera, we present Deep Event VO (DEVO), the first monocular event-only system with strong performance on a large number of real-world benchmarks. DEVO sparsely tracks selected event patches over time. A key component of DEVO is a novel deep patch selection mechanism tailored to event data. We significantly decrease the pose tracking error on seven real-world benchmarks by up to 97% compared to event-only methods and often surpass or are close to stereo or inertial methods. Code is available at https://github.com/tum-vision/DEVO

Simon Klenk, Marvin Motzet, Lukas Koestler, Daniel Cremers• 2023

Related benchmarks

TaskDatasetResultRank
SLAMHKU and VECtor (test)
Average RMSE0.29
7
Monocular Visual OdometryMonocular VO Systems Performance
Power Consumption250
7
Trajectory EstimationTUM-VIE
1D Error0.23
5
Trajectory EstimationReplica
Trajectory Error (room0)0.271
4
Showing 4 of 4 rows

Other info

Follow for update