2020
DOI: 10.48550/arxiv.2010.04324
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Deep-Masking Generative Network: A Unified Framework for Background Restoration from Superimposed Images

Xin Feng,
Wenjie Pei,
Zihui Jia
et al.

Abstract: Restoring the clean background from the superimposed images containing a noisy layer is the common crux of a classical category of tasks on image restoration such as image reflection removal, image deraining and image dehazing. These tasks are typically formulated and tackled individually due to the diverse and complicated appearance patterns of noise layers within the image. In this work we present the Deep-Masking Generative Network (DMGN), which is a unified framework for background restoration from the sup… Show more

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“…Roy et al [40] present an image inpainting method using frequency-domain information as structural priors to reconstruct the intact image. Feng et al [41] introduce a deep-masking mechanism to infer corrupted areas from the known content in a coarse-to-fine manner. Bo et al [42] propose a two-stage image inpainting model composed of structure generation network and texture generation network.…”
Section: B Deep Learning-based Methods For Image Inpaintingmentioning
confidence: 99%
“…Roy et al [40] present an image inpainting method using frequency-domain information as structural priors to reconstruct the intact image. Feng et al [41] introduce a deep-masking mechanism to infer corrupted areas from the known content in a coarse-to-fine manner. Bo et al [42] propose a two-stage image inpainting model composed of structure generation network and texture generation network.…”
Section: B Deep Learning-based Methods For Image Inpaintingmentioning
confidence: 99%