GeneGAN: Learning Object Transfiguration and Attribute Subspace from Unpaired Data

05/14/2017
by   Shuchang Zhou, et al.
0

Object Transfiguration replaces an object in an image with another object from a second image. For example it can perform tasks like "putting exactly those eyeglasses from image A on the nose of the person in image B". Usage of exemplar images allows more precise specification of desired modifications and improves the diversity of conditional image generation. However, previous methods that rely on feature space operations, require paired data and/or appearance models for training or disentangling objects from background. In this work, we propose a model that can learn object transfiguration from two unpaired sets of images: one set containing images that "have" that kind of object, and the other set being the opposite, with the mild constraint that the objects be located approximately at the same place. For example, the training data can be one set of reference face images that have eyeglasses, and another set of images that have not, both of which spatially aligned by face landmarks. Despite the weak 0/1 labels, our model can learn an "eyeglasses" subspace that contain multiple representatives of different types of glasses. Consequently, we can perform fine-grained control of generated images, like swapping the glasses in two images by swapping the projected components in the "eyeglasses" subspace, to create novel images of people wearing eyeglasses. Overall, our deterministic generative model learns disentangled attribute subspaces from weakly labeled data by adversarial training. Experiments on CelebA and Multi-PIE datasets validate the effectiveness of the proposed model on real world data, in generating images with specified eyeglasses, smiling, hair styles, and lighting conditions etc. The code is available online.

READ FULL TEXT

page 2

page 3

page 4

page 5

page 8

page 9

research
08/27/2020

Attribute-guided image generation from layout

Recent approaches have achieved great success in image generation from s...
research
01/03/2019

Generating Multiple Objects at Spatially Distinct Locations

Recent improvements to Generative Adversarial Networks (GANs) have made ...
research
11/26/2019

MixNMatch: Multifactor Disentanglement and Encodingfor Conditional Image Generation

We present MixNMatch, a conditional generative model that learns to dise...
research
11/26/2019

MixNMatch: Multifactor Disentanglement and Encoding for Conditional Image Generation

We present MixNMatch, a conditional generative model that learns to dise...
research
01/24/2019

Learning Disentangled Representations with Reference-Based Variational Autoencoders

Learning disentangled representations from visual data, where different ...
research
06/20/2022

DALL-E for Detection: Language-driven Context Image Synthesis for Object Detection

Object cut-and-paste has become a promising approach to efficiently gene...
research
06/20/2018

Conditional Image Generation for Learning the Structure of Visual Objects

In this paper, we consider the problem of learning landmarks for object ...

Please sign up or login with your details

Forgot password? Click here to reset