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Fader Networks: Manipulating Images by Sliding Attributes

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arxiv 1706.00409 v2 pith:VVYCCES4 submitted 2017-06-01 cs.CV

Fader Networks: Manipulating Images by Sliding Attributes

classification cs.CV
keywords attributeattributesimagevaluesimagestrainingchangemodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper introduces a new encoder-decoder architecture that is trained to reconstruct images by disentangling the salient information of the image and the values of attributes directly in the latent space. As a result, after training, our model can generate different realistic versions of an input image by varying the attribute values. By using continuous attribute values, we can choose how much a specific attribute is perceivable in the generated image. This property could allow for applications where users can modify an image using sliding knobs, like faders on a mixing console, to change the facial expression of a portrait, or to update the color of some objects. Compared to the state-of-the-art which mostly relies on training adversarial networks in pixel space by altering attribute values at train time, our approach results in much simpler training schemes and nicely scales to multiple attributes. We present evidence that our model can significantly change the perceived value of the attributes while preserving the naturalness of images.

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