Neuromorphic Imaging with Joint Image Deblurring and Event Denoising
Pei Zhang, Haosen Liu, Zhou Ge, Chutian Wang, Edmund Y. Lam

TL;DR
This paper introduces a joint algorithm that effectively reconstructs sharp images and denoises events in neuromorphic imaging, improving quality and robustness in dynamic scenes with motion blur and sensor noise.
Contribution
The work presents a novel unified approach combining image deblurring and event denoising using an iterative coarse-to-fine method with event-regularized priors and image gradients.
Findings
Superior reconstruction of sharp images from blurry data
Effective noise reduction in raw neuromorphic events
Robust performance under varying illumination and motion conditions
Abstract
Neuromorphic imaging reacts to per-pixel brightness changes of a dynamic scene with high temporal precision and responds with asynchronous streaming events as a result. It also often supports a simultaneous output of an intensity image. Nevertheless, the raw events typically involve a large amount of noise due to the high sensitivity of the sensor, while capturing fast-moving objects at low frame rates results in blurry images. These deficiencies significantly degrade human observation and machine processing. Fortunately, the two information sources are inherently complementary -- events with microsecond-level temporal resolution, which are triggered by the edges of objects recorded in a latent sharp image, can supply rich motion details missing from the blurry one. In this work, we bring the two types of data together and introduce a simple yet effective unifying algorithm to jointly…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Medical Imaging Techniques and Applications
