Manifold Alignment for Semantically Aligned Style Transfer
Jing Huo, Shiyin Jin, Wenbin Li, Jing Wu, Yu-Kun Lai, Yinghuan Shi,, Yang Gao

TL;DR
This paper introduces a novel style transfer framework based on manifold alignment that preserves semantic content and allows user guidance, improving both artistic and photorealistic style transfer results.
Contribution
It proposes a multi-manifold distribution alignment approach for style transfer, addressing semantic structure preservation and enabling user-guided editing.
Findings
Effective in artistic style transfer
Preserves content details in photorealistic transfer
Supports user-guided semantic segmentation
Abstract
Most existing style transfer methods follow the assumption that styles can be represented with global statistics (e.g., Gram matrices or covariance matrices), and thus address the problem by forcing the output and style images to have similar global statistics. An alternative is the assumption of local style patterns, where algorithms are designed to swap similar local features of content and style images. However, the limitation of these existing methods is that they neglect the semantic structure of the content image which may lead to corrupted content structure in the output. In this paper, we make a new assumption that image features from the same semantic region form a manifold and an image with multiple semantic regions follows a multi-manifold distribution. Based on this assumption, the style transfer problem is formulated as aligning two multi-manifold distributions and a…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Image Enhancement Techniques · Computer Graphics and Visualization Techniques
