TL;DR
This paper introduces Lapstyle, a neural style transfer method that incorporates a Laplacian loss to better preserve content details and reduce artifacts in stylized images, improving visual quality.
Contribution
The paper proposes a novel Laplacian loss function integrated into neural style transfer to enhance content detail preservation and artifact reduction.
Findings
Produces more appealing stylized images
Reduces artifacts compared to traditional methods
Maintains style transfer quality
Abstract
Neural Style Transfer based on Convolutional Neural Networks (CNN) aims to synthesize a new image that retains the high-level structure of a content image, rendered in the low-level texture of a style image. This is achieved by constraining the new image to have high-level CNN features similar to the content image, and lower-level CNN features similar to the style image. However in the traditional optimization objective, low-level features of the content image are absent, and the low-level features of the style image dominate the low-level detail structures of the new image. Hence in the synthesized image, many details of the content image are lost, and a lot of inconsistent and unpleasing artifacts appear. As a remedy, we propose to steer image synthesis with a novel loss function: the Laplacian loss. The Laplacian matrix ("Laplacian" in short), produced by a Laplacian operator, is…
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