Publication | Closed Access
EventZoom: Learning to Denoise and Super Resolve Neuromorphic Events
74
Citations
37
References
2021
Year
Unknown Venue
Event-based VisionEvent CameraEvent Signal ProcessingMachine LearningEngineeringSocial SciencesImage AnalysisData ScienceSingle-image Super-resolutionComputational ImagingVideo RestorationNeurocomputersMachine VisionNeuroinformaticsSpace-time WindowComputer ScienceMedical Image ComputingDeep LearningResolution EnhancementComputer VisionComputational NeuroscienceVideo HallucinationNeuroscienceBrain-like Computing
We address the problem of jointly denoising and super resolving neuromorphic events, a novel visual signal that represents thresholded temporal gradients in a space-time window. The challenge for event signal processing is that they are asynchronously generated, and do not carry absolute intensity but only binary signs informing temporal variations. To study event signal formation and degradation, we implement a display-camera system which enables multi-resolution event recording. We further propose Event- Zoom, a deep neural framework with a backbone architecture of 3D U-Net. EventZoom is trained in a noise-to-noise fashion where the two ends of the network are unfiltered noisy events, enforcing noise-free event restoration. For resolution enhancement, EventZoom incorporates an event-to- image module supervised by high resolution images. Our results showed that EventZoom achieves at least 40 × temporal efficiency compared to state-of-the-art (SOTA) event denoisers. Additionally, we demonstrate that EventZoom enables performance improvements on applications including event-based visual object tracking and image reconstruction. EventZoom achieves SOTA super resolution image reconstruction results while being 10× faster.
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