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Finding an Unsupervised Image Segmenter in Each of Your Deep Generative Models

About

Recent research has shown that numerous human-interpretable directions exist in the latent space of GANs. In this paper, we develop an automatic procedure for finding directions that lead to foreground-background image separation, and we use these directions to train an image segmentation model without human supervision. Our method is generator-agnostic, producing strong segmentation results with a wide range of different GAN architectures. Furthermore, by leveraging GANs pretrained on large datasets such as ImageNet, we are able to segment images from a range of domains without further training or finetuning. Evaluating our method on image segmentation benchmarks, we compare favorably to prior work while using neither human supervision nor access to the training data. Broadly, our results demonstrate that automatically extracting foreground-background structure from pretrained deep generative models can serve as a remarkably effective substitute for human supervision.

Luke Melas-Kyriazi, Christian Rupprecht, Iro Laina, Andrea Vedaldi• 2021

Related benchmarks

TaskDatasetResultRank
Salient Object DetectionECSSD--
202
Salient Object DetectionECSSD 1,000 images (test)--
48
Saliency DetectionDUT-OMRON 29 (test)
IoU50.9
38
RGB saliency detectionECSSD
F-measure (F_beta)80.6
25
Saliency DetectionDUTS (test)
IoU52.8
22
Saliency DetectionECSSD 31 (test)
mIoU0.713
20
Saliency DetectionDUTS 30 (test)
IoU52.8
20
Unsupervised Object SegmentationCUB
Jaccard Index66.4
16
Saliency DetectionDUTS
J-measure52.8
13
Saliency DetectionDUT-OMRON
J-Measure50.9
12
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