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Image inpainting based on fusion structure information and pixelwise attention
by
Cheng, Jixiang
, Chen, Zhou
, Li, Zhidan
, Wu, Dan
in
Artificial Intelligence
/ Computer Graphics
/ Computer Science
/ Cultural heritage
/ Datasets
/ Deep learning
/ Embedding
/ Image Processing and Computer Vision
/ Image quality
/ Image restoration
/ Methods
/ Neural networks
/ Original Article
/ Partial differential equations
/ Qualitative analysis
/ Semantics
/ Sparsity
2024
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Image inpainting based on fusion structure information and pixelwise attention
by
Cheng, Jixiang
, Chen, Zhou
, Li, Zhidan
, Wu, Dan
in
Artificial Intelligence
/ Computer Graphics
/ Computer Science
/ Cultural heritage
/ Datasets
/ Deep learning
/ Embedding
/ Image Processing and Computer Vision
/ Image quality
/ Image restoration
/ Methods
/ Neural networks
/ Original Article
/ Partial differential equations
/ Qualitative analysis
/ Semantics
/ Sparsity
2024
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Do you wish to request the book?
Image inpainting based on fusion structure information and pixelwise attention
by
Cheng, Jixiang
, Chen, Zhou
, Li, Zhidan
, Wu, Dan
in
Artificial Intelligence
/ Computer Graphics
/ Computer Science
/ Cultural heritage
/ Datasets
/ Deep learning
/ Embedding
/ Image Processing and Computer Vision
/ Image quality
/ Image restoration
/ Methods
/ Neural networks
/ Original Article
/ Partial differential equations
/ Qualitative analysis
/ Semantics
/ Sparsity
2024
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Image inpainting based on fusion structure information and pixelwise attention
Journal Article
Image inpainting based on fusion structure information and pixelwise attention
2024
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Overview
Image inpainting refers to restoring the damaged areas of an image using the remaining available information. In recent years, deep learning-based image inpainting has been extensively explored and shown remarkable performance, among which the parallel prior embedding methods have the advantages of few network parameters and relatively low training difficulty. However, most methods use a single prior that is unable to provide sufficient guidance information. Hence, they are unable to generate high-quality, realistic, and vivid images. Fusion labels are effective priors that could provide more meaningful guidance information for inpainting. Meanwhile, attention mechanisms can focus on effective features and establish long-range correlations, which is helpful to refine texture details. Therefore, this paper proposes a parallel prior embedding image inpainting method based on fusion structure information (FSI) and pixelwise attention. A FSI module using the color structure and edge information is designed to update structure features and image features alternately, pixelwise attention is utilized to refine image details, and a joint loss is applied to constrain model training. Extensive experiments are conducted on multiple public datasets, and the results show that the proposed method achieves generally superior performance over several compared methods in terms of several quantitative metrics and qualitative analysis.
Publisher
Springer Berlin Heidelberg,Springer Nature B.V
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