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Spectral Normalized U-Net for Light Field Occlusion Removal

Research Abstract

Occlusion artifacts significantly hinder light field (LF) image reconstruction, especially in complex scenes. We propose a spectral normalized U-Net for LF occlusion removal, which begins by stacking LF views and extracting view-dependent features using a local feature encoder. To capture spatial complexity, ResASPP enable multi-scale context aggregation, while channel attention enhances occlusion-related features. Spectral normalization is applied to all convolutional layers to improve training stability and generalization. The encoder-decoder structure with skip connections preserves fine details. Experimental results show our method restores occluded regions more accurately than baselines.

Research Authors
Mostafa Farouk Senussi, Mahmoud Abdalla, Mahmoud SalahEldin Kasem, Mohamed Mahmoud, Hyun-Soo Kang
Research Date
Research Department
Research Image
Overview of the Proposed Spectral Normalized U-Net for Occlusion Removal in LF Images
Research Journal
INTERNATIONAL CONFERENCE ON FUTURE INFORMATION & COMMUNICATION ENGINEERING
Research Pages
294-297
Research Publisher
Korea Information and Communications Society
Research Vol
16
Research Website
https://www.dbpia.co.kr/pdf/pdfView.do?nodeId=NODE12293106
Research Year
2025