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Papers/Component Attention Guided Face Super-Resolution Network: ...

Component Attention Guided Face Super-Resolution Network: CAGFace

Ratheesh Kalarot, Tao Li, Fatih Porikli

2019-10-19Super-Resolution
PaperPDFCode

Abstract

To make the best use of the underlying structure of faces, the collective information through face datasets and the intermediate estimates during the upsampling process, here we introduce a fully convolutional multi-stage neural network for 4$\times$ super-resolution for face images. We implicitly impose facial component-wise attention maps using a segmentation network to allow our network to focus on face-inherent patterns. Each stage of our network is composed of a stem layer, a residual backbone, and spatial upsampling layers. We recurrently apply stages to reconstruct an intermediate image, and then reuse its space-to-depth converted versions to bootstrap and enhance image quality progressively. Our experiments show that our face super-resolution method achieves quantitatively superior and perceptually pleasing results in comparison to state of the art.

Results

TaskDatasetMetricValueModel
Super-ResolutionFFHQ 256 x 256 - 4x upscalingFID74.43CAGFace
Super-ResolutionFFHQ 256 x 256 - 4x upscalingMS-SSIM0.958CAGFace
Super-ResolutionFFHQ 256 x 256 - 4x upscalingPSNR27.42CAGFace
Super-ResolutionFFHQ 256 x 256 - 4x upscalingSSIM0.816CAGFace
Super-ResolutionFFHQ 1024 x 1024 - 4x upscalingFID12.4CAGFace
Super-ResolutionFFHQ 1024 x 1024 - 4x upscalingMS-SSIM0.971CAGFace
Super-ResolutionFFHQ 1024 x 1024 - 4x upscalingPSNR34.1CAGFace
Super-ResolutionFFHQ 1024 x 1024 - 4x upscalingSSIM0.906CAGFace
Image Super-ResolutionFFHQ 256 x 256 - 4x upscalingFID74.43CAGFace
Image Super-ResolutionFFHQ 256 x 256 - 4x upscalingMS-SSIM0.958CAGFace
Image Super-ResolutionFFHQ 256 x 256 - 4x upscalingPSNR27.42CAGFace
Image Super-ResolutionFFHQ 256 x 256 - 4x upscalingSSIM0.816CAGFace
Image Super-ResolutionFFHQ 1024 x 1024 - 4x upscalingFID12.4CAGFace
Image Super-ResolutionFFHQ 1024 x 1024 - 4x upscalingMS-SSIM0.971CAGFace
Image Super-ResolutionFFHQ 1024 x 1024 - 4x upscalingPSNR34.1CAGFace
Image Super-ResolutionFFHQ 1024 x 1024 - 4x upscalingSSIM0.906CAGFace
3D Object Super-ResolutionFFHQ 256 x 256 - 4x upscalingFID74.43CAGFace
3D Object Super-ResolutionFFHQ 256 x 256 - 4x upscalingMS-SSIM0.958CAGFace
3D Object Super-ResolutionFFHQ 256 x 256 - 4x upscalingPSNR27.42CAGFace
3D Object Super-ResolutionFFHQ 256 x 256 - 4x upscalingSSIM0.816CAGFace
3D Object Super-ResolutionFFHQ 1024 x 1024 - 4x upscalingFID12.4CAGFace
3D Object Super-ResolutionFFHQ 1024 x 1024 - 4x upscalingMS-SSIM0.971CAGFace
3D Object Super-ResolutionFFHQ 1024 x 1024 - 4x upscalingPSNR34.1CAGFace
3D Object Super-ResolutionFFHQ 1024 x 1024 - 4x upscalingSSIM0.906CAGFace
16kFFHQ 256 x 256 - 4x upscalingFID74.43CAGFace
16kFFHQ 256 x 256 - 4x upscalingMS-SSIM0.958CAGFace
16kFFHQ 256 x 256 - 4x upscalingPSNR27.42CAGFace
16kFFHQ 256 x 256 - 4x upscalingSSIM0.816CAGFace
16kFFHQ 1024 x 1024 - 4x upscalingFID12.4CAGFace
16kFFHQ 1024 x 1024 - 4x upscalingMS-SSIM0.971CAGFace
16kFFHQ 1024 x 1024 - 4x upscalingPSNR34.1CAGFace
16kFFHQ 1024 x 1024 - 4x upscalingSSIM0.906CAGFace

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