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ProDebNet: projector deblurring using a convolutional neural network

Yuta Kageyama, Mariko Isogawa, Daisuke Iwai, Kosuke Sato

2020Optics Express18 citationsDOIOpen Access PDF

Abstract

Projection blur can occur in practical use cases that have non-planar and/or multi-projection display surfaces with various scattering characteristics because the surface often causes defocus and subsurface scattering. To address this issue, we propose ProDebNet, an end-to-end real-time projection deblurring network that synthesizes a projection image to minimize projection blur. The proposed method generates a projection image without explicitly estimating any geometry or scattering characteristics of the projection screen, which makes real-time processing possible. In addition, ProDebNet does not require real captured images for training data; we design a "pseudo-projected" synthetic dataset that is well-generalized to real-world blur data. Experimental results demonstrate that the proposed ProDebNet compensates for two dominant types of projection blur, i.e., defocus blur and subsurface blur, significantly faster than the baseline method, even in a real-projection scene.

Topics & Concepts

DeblurringProjection (relational algebra)Artificial intelligenceProjectorComputer scienceComputer visionConvolutional neural networkImage restorationImage processingImage (mathematics)OpticsAlgorithmPhysicsAdvanced Optical Imaging TechnologiesImage Processing Techniques and ApplicationsAdvanced Vision and Imaging