资源论文Unsupervised Disentangling of Appearance and Geometry by Deformable Generator Network

Unsupervised Disentangling of Appearance and Geometry by Deformable Generator Network

2019-09-27 | |  106 |   62 |   0

Abstract We present a deformable generator model to disentangle the appearance and geometric information in purely unsupervised manner. The appearance generator models the appearance related information, including color, illumination, identity or category, of an image, while the geometric generator performs geometric related warping, such as rotation and stretching, through generating displacement of the coordinate of each pixel to obtain the fifinal image. Two generators act upon independent latent factors to extract disentangled appearance and geometric information from images. The proposed scheme is general and can be easily integrated into different generative models. An extensive set of qualitative and quantitative experiments shows that the appearance and geometric information can be well disentangled, and the learned geometric generator can be conveniently transferred to other image datasets to facilitate knowledge transfer tasks

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