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Papers/Perceptual Losses for Real-Time Style Transfer and Super-R...

Perceptual Losses for Real-Time Style Transfer and Super-Resolution

Justin Johnson, Alexandre Alahi, Li Fei-Fei

2016-03-27Super-ResolutionStyle TransferImage Super-ResolutionNuclear SegmentationSpeech Enhancement
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Abstract

We consider image transformation problems, where an input image is transformed into an output image. Recent methods for such problems typically train feed-forward convolutional neural networks using a \emph{per-pixel} loss between the output and ground-truth images. Parallel work has shown that high-quality images can be generated by defining and optimizing \emph{perceptual} loss functions based on high-level features extracted from pretrained networks. We combine the benefits of both approaches, and propose the use of perceptual loss functions for training feed-forward networks for image transformation tasks. We show results on image style transfer, where a feed-forward network is trained to solve the optimization problem proposed by Gatys et al in real-time. Compared to the optimization-based method, our network gives similar qualitative results but is three orders of magnitude faster. We also experiment with single-image super-resolution, where replacing a per-pixel loss with a perceptual loss gives visually pleasing results.

Results

TaskDatasetMetricValueModel
Super-ResolutionBSD100 - 4x upscalingPSNR24.95Perceptual Loss
Super-ResolutionBSD100 - 4x upscalingSSIM0.6317Perceptual Loss
Medical Image SegmentationCell17Dice0.6165FnsNet
Medical Image SegmentationCell17F1-score0.7413FnsNet
Medical Image SegmentationCell17Hausdorff25.9102FnsNet
Image Super-ResolutionBSD100 - 4x upscalingPSNR24.95Perceptual Loss
Image Super-ResolutionBSD100 - 4x upscalingSSIM0.6317Perceptual Loss
3D Object Super-ResolutionBSD100 - 4x upscalingPSNR24.95Perceptual Loss
3D Object Super-ResolutionBSD100 - 4x upscalingSSIM0.6317Perceptual Loss
16kBSD100 - 4x upscalingPSNR24.95Perceptual Loss
16kBSD100 - 4x upscalingSSIM0.6317Perceptual Loss

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