Super-resolution of spatiotemporal event-stream image captured by the asynchronous temporal contrast vision sensor
Hongmin Li, Guoqi Li, Hanchao Liu, Luping Shi

TL;DR
This paper introduces a novel two-stage super-resolution method for spatiotemporal event-stream images captured by dynamic vision sensors, enhancing spatial detail while preserving temporal properties.
Contribution
It proposes a new approach using Poisson process modeling and sparse signal representation to generate high-resolution event streams from low-resolution data.
Findings
Enhanced spatial texture detail in super-resolved images
Temporal properties closely match original input
Method outperforms existing approaches in quality metrics
Abstract
Super-resolution (SR) is a useful technology to generate a high-resolution (HR) visual output from the low-resolution (LR) visual inputs overcoming the physical limitations of the cameras. However, SR has not been applied to enhance the resolution of spatiotemporal event-stream images captured by the frame-free dynamic vision sensors (DVSs). SR of event-stream image is fundamentally different from existing frame-based schemes since basically each pixel value of DVS images is an event sequence. In this work, a two-stage scheme is proposed to solve the SR problem of the spatiotemporal event-stream image. We use a nonhomogeneous Poisson point process to model the event sequence, and sample the events of each pixel by simulating a nonhomogeneous Poisson process according to the specified event number and rate function. Firstly, the event number of each pixel of the HR DVS image is…
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Taxonomy
TopicsNeural dynamics and brain function · Advanced Memory and Neural Computing · Photoreceptor and optogenetics research
