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Learning Compositional Visual Concepts with Mutual Consistency

Compositionality of semantic concepts in image synthesis and analysis is appealing as it can help in decomposing known and generatively recomposing unknown data. For instance, we may learn concepts of changing illumination, geometry or albedo of a scene, and try to recombine them to generate physica...

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Published in:arXiv.org 2018-03
Main Authors: Gong, Yunye, Karanam, Srikrishna, Wu, Ziyan, Kuan-Chuan Peng, Ernst, Jan, Doerschuk, Peter C
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Karanam, Srikrishna
Wu, Ziyan
Kuan-Chuan Peng
Ernst, Jan
Doerschuk, Peter C
description Compositionality of semantic concepts in image synthesis and analysis is appealing as it can help in decomposing known and generatively recomposing unknown data. For instance, we may learn concepts of changing illumination, geometry or albedo of a scene, and try to recombine them to generate physically meaningful, but unseen data for training and testing. In practice however we often do not have samples from the joint concept space available: We may have data on illumination change in one data set and on geometric change in another one without complete overlap. We pose the following question: How can we learn two or more concepts jointly from different data sets with mutual consistency where we do not have samples from the full joint space? We present a novel answer in this paper based on cyclic consistency over multiple concepts, represented individually by generative adversarial networks (GANs). Our method, ConceptGAN, can be understood as a drop in for data augmentation to improve resilience for real world applications. Qualitative and quantitative evaluations demonstrate its efficacy in generating semantically meaningful images, as well as one shot face verification as an example application.
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subjects Albedo
Consistency
Face recognition
Illumination
Qualitative analysis
title Learning Compositional Visual Concepts with Mutual Consistency
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