MixNMatch: Multifactor Disentanglement and Encodingfor Conditional Image Generation

CVPR(2020)

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摘要
We present MixNMatch, a conditional generative model that learns to disentangle and encode background, object pose, shape, and texture from real images with minimal supervision, for mix-and-match image generation. We build upon FineGAN, an unconditional generative model, to learn the desired disentanglement and image generator, and leverage adversarial joint image-code distribution matching to learn the latent factor encoders. MixNMatch requires bounding boxes during training to model background, but requires no other supervision. Through extensive experiments, we demonstrate MixNMatch's ability to accurately disentangle, encode, and combine multiple factors for mix-and-match image generation, including sketch2color, cartoon2img, and img2gif applications. Our code/models/demo can be found at https://github.com/Yuheng-Li/MixNMatch
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关键词
MixNMatch's ability,model background,latent factor encoders,leverage adversarial joint image-code distribution,image generator,desired disentanglement,unconditional generative model,encode background,disentangle background,conditional generative model,conditional image generation,encoding,multifactor disentanglement
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