Attentive Conditional Channel-Recurrent Autoencoding For Attribute-Conditioned Face Synthesis

2019 IEEE WINTER CONFERENCE ON APPLICATIONS OF COMPUTER VISION (WACV)(2019)

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摘要
Attribute-conditioned face synthesis has many useful applications, such as to aid the identification of a suspect or a missing person. Building on top of a conditional version of VAE-GAN, we augment the pathways connecting the latent space with channel-recurrent architecture, in order to provide not only improved generation qualities but also interpretable high-level features. In particular, to better achieve the latter, we further propose an attention mechanism over each attribute to indicate the specific latent subset responsible for its modulation. Thanks to the latent semantics formed via the channel-recurreny, we envision a tool that takes the desired attributes as inputs and then performs a 2-stage general-to-specific generation of diverse and realistic faces. Lastly, we incorporate the progressive-growth training scheme to the inference, generation and discriminator networks of our models to facilitate higher resolution outputs. Evaluations are performed through both qualitative visual examination and quantitative metrics, namely inception scores, human preferences, and attribute classification accuracy.
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关键词
missing person identification,attentive conditional channel-recurrent autoencoding,attribute-conditioned face synthesis,attribute classification accuracy,discriminator networks,progressive-growth training scheme,realistic faces,diverse faces,2-stage general-to-specific generation,channel-recurreny,latent semantics,channel-recurrent architecture,VAE-GAN,conditional version
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