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LADN: Local Adversarial Disentangling Network for Facial Makeup and De-Makeup

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arxiv 1904.11272 v2 pith:J5AEQ5YF submitted 2019-04-25 cs.CV cs.AIcs.LG

LADN: Local Adversarial Disentangling Network for Facial Makeup and De-Makeup

classification cs.CV cs.AIcs.LG
keywords localadversarialdetailsfacialmakeupstylesdisentanglinghigh-frequency
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose a local adversarial disentangling network (LADN) for facial makeup and de-makeup. Central to our method are multiple and overlapping local adversarial discriminators in a content-style disentangling network for achieving local detail transfer between facial images, with the use of asymmetric loss functions for dramatic makeup styles with high-frequency details. Existing techniques do not demonstrate or fail to transfer high-frequency details in a global adversarial setting, or train a single local discriminator only to ensure image structure consistency and thus work only for relatively simple styles. Unlike others, our proposed local adversarial discriminators can distinguish whether the generated local image details are consistent with the corresponding regions in the given reference image in cross-image style transfer in an unsupervised setting. Incorporating these technical contributions, we achieve not only state-of-the-art results on conventional styles but also novel results involving complex and dramatic styles with high-frequency details covering large areas across multiple facial features. A carefully designed dataset of unpaired before and after makeup images is released.

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