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v2e: From Video Frames to Realistic DVS Events

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To help meet the increasing need for dynamic vision sensor (DVS) event camera data, this paper proposes the v2e toolbox that generates realistic synthetic DVS events from intensity frames. It also clarifies incorrect claims about DVS motion blur and latency characteristics in recent literature. Unlike other toolboxes, v2e includes pixel-level Gaussian event threshold mismatch, finite intensity-dependent bandwidth, and intensity-dependent noise. Realistic DVS events are useful in training networks for uncontrolled lighting conditions. The use of v2e synthetic events is demonstrated in two experiments. The first experiment is object recognition with N-Caltech 101 dataset. Results show that pretraining on various v2e lighting conditions improves generalization when transferred on real DVS data for a ResNet model. The second experiment shows that for night driving, a car detector trained with v2e events shows an average accuracy improvement of 40% compared to the YOLOv3 trained on intensity frames.

Yuhuang Hu, Shih-Chii Liu, Tobi Delbruck• 2020

Related benchmarks

TaskDatasetResultRank
Semantic segmentationDSEC
mIoU7.5678
24
Video Frame InterpolationBS-ERGB
LPIPS0.0616
17
Batching diagnosticsHS-ERGB
Same-ts0.1267
6
Batching diagnosticsBS-ERGB
Same-ts0.1556
6
Batching diagnosticsEDS
Same-ts0.0763
6
Event-stream fidelityEDS
IG-NLL0.0041
6
Event-stream fidelityHS-ERGB
IG-NLL0.0058
6
Event-stream fidelityBS-ERGB
IG-NLL0.0061
6
Batching diagnosticsDSEC
Same-ts0.2269
6
Event-stream fidelityDSEC
IG-NLL0.0998
6
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