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5 months ago

HyperE2VID: Improving Event-Based Video Reconstruction via Hypernetworks

Ercan Burak ; Eker Onur ; Saglam Canberk ; Erdem Aykut ; Erdem Erkut

HyperE2VID: Improving Event-Based Video Reconstruction via Hypernetworks

Abstract

Event-based cameras are becoming increasingly popular for their ability tocapture high-speed motion with low latency and high dynamic range. However,generating videos from events remains challenging due to the highly sparse andvarying nature of event data. To address this, in this study, we proposeHyperE2VID, a dynamic neural network architecture for event-based videoreconstruction. Our approach uses hypernetworks to generate per-pixel adaptivefilters guided by a context fusion module that combines information from eventvoxel grids and previously reconstructed intensity images. We also employ acurriculum learning strategy to train the network more robustly. Ourcomprehensive experimental evaluations across various benchmark datasets revealthat HyperE2VID not only surpasses current state-of-the-art methods in terms ofreconstruction quality but also achieves this with fewer parameters, reducedcomputational requirements, and accelerated inference times.

Code Repositories

ercanburak/HyperE2VID
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
event-based-video-reconstruction-on-eventHyperE2VID
Mean Squared Error: 0.033
video-reconstruction-on-event-camera-datasetHyperE2VID
LPIPS: 0.212
Mean Squared Error: 0.033
video-reconstruction-on-mvsecHyperE2VID
LPIPS: 0.476
Mean Squared Error: 0.076

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HyperE2VID: Improving Event-Based Video Reconstruction via Hypernetworks | Papers | HyperAI