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OneGAN: Simultaneous Unsupervised Learning of Conditional Image Generation, Foreground Segmentation, and Fine-Grained Clustering

About

We present a method for simultaneously learning, in an unsupervised manner, (i) a conditional image generator, (ii) foreground extraction and segmentation, (iii) clustering into a two-level class hierarchy, and (iv) object removal and background completion, all done without any use of annotation. The method combines a Generative Adversarial Network and a Variational Auto-Encoder, with multiple encoders, generators and discriminators, and benefits from solving all tasks at once. The input to the training scheme is a varied collection of unlabeled images from the same domain, as well as a set of background images without a foreground object. In addition, the image generator can mix the background from one image, with a foreground that is conditioned either on that of a second image or on the index of a desired cluster. The method obtains state of the art results in comparison to the literature methods, when compared to the current state of the art in each of the tasks.

Yaniv Benny, Lior Wolf• 2019

Related benchmarks

TaskDatasetResultRank
Unsupervised Object SegmentationCUB
Jaccard Index55.5
16
Foreground extractionDogs (train)
IoU71
10
Foreground extractionCars (train)
IoU71.2
10
Foreground extractionCaltech-UCSD Birds-200 2011 (train)
IoU55.5
7
Single Object SegmentationCUB (test)
mIoU55.5
5
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