TL;DR
This paper introduces EIPNet, a lightweight face super-resolution network that preserves edges and identity, improving image quality and reconstruction speed for security applications.
Contribution
The paper proposes a novel edge and identity preserving network with a lightweight structure, incorporating an edge block, identity loss, and luminance-chrominance error for enhanced face super-resolution.
Findings
Outperforms state-of-the-art methods on CelebA and VGGFace2 datasets.
Generates high-quality 8x super-resolved images at 215 fps.
Effectively preserves facial identity and structural details.
Abstract
Face super-resolution (SR) has become an indispensable function in security solutions such as video surveillance and identification system, but the distortion in facial components is a great challenge in it. Most state-of-the-art methods have utilized facial priors with deep neural networks. These methods require extra labels, longer training time, and larger computation memory. In this paper, we propose a novel Edge and Identity Preserving Network for Face SR Network, named as EIPNet, to minimize the distortion by utilizing a lightweight edge block and identity information. We present an edge block to extract perceptual edge information, and concatenate it to the original feature maps in multiple scales. This structure progressively provides edge information in reconstruction to aggregate local and global structural information. Moreover, we define an identity loss function to preserve…
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