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Motion-aware Event Suppression for Event Cameras

About

In this work, we introduce the first framework for Motion-aware Event Suppression, which learns to filter events triggered by IMOs and ego-motion in real time. Our model jointly segments IMOs in the current event stream while predicting their future motion, enabling anticipatory suppression of dynamic events before they occur. Our lightweight architecture achieves 173 Hz inference on consumer-grade GPUs with less than 1 GB of memory usage, outperforming previous state-of-the-art methods on the challenging EVIMO benchmark by 67\% in segmentation accuracy while operating at a 53\% higher inference rate. Moreover, we demonstrate significant benefits for downstream applications: our method accelerates Vision Transformer inference by 83\% via token pruning and improves event-based visual odometry accuracy, reducing Absolute Trajectory Error (ATE) by 13\%.

Roberto Pellerito, Nico Messikommer, Giovanni Cioffi, Marco Cannici, Davide Scaramuzza• 2026

Related benchmarks

TaskDatasetResultRank
Future Motion SegmentationEVIMO
mIoU84.57
24
Motion SegmentationEVIMO current instant original
pIoU (Boxes)72
10
Motion SegmentationGeneral Evaluation Sequences
Mean Inference Time5.76
3
Motion SegmentationEED
FD mIoU72.6
3
Visual OdometryEVIMO
ATE (Boxes)0.29
3
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