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Deformable GANs for Pose-based Human Image Generation

About

In this paper we address the problem of generating person images conditioned on a given pose. Specifically, given an image of a person and a target pose, we synthesize a new image of that person in the novel pose. In order to deal with pixel-to-pixel misalignments caused by the pose differences, we introduce deformable skip connections in the generator of our Generative Adversarial Network. Moreover, a nearest-neighbour loss is proposed instead of the common L1 and L2 losses in order to match the details of the generated image with the target image. We test our approach using photos of persons in different poses and we compare our method with previous work in this area showing state-of-the-art results in two benchmarks. Our method can be applied to the wider field of deformable object generation, provided that the pose of the articulated object can be extracted using a keypoint detector.

Aliaksandr Siarohin, Enver Sangineto, Stephane Lathuiliere, Nicu Sebe• 2017

Related benchmarks

TaskDatasetResultRank
Person Re-IdentificationMarket-1501 1.0 (test)
Rank-180.6
131
Person Re-IdentificationMarket-1501 (train)
Rank-1 Acc65.3
80
Person Image GenerationMarket-1501 (test)
SSIM0.291
25
Person Image GenerationDeepFashion (test)
SSIM0.76
19
Human avatar synthesisPeople Snapshot (test)
SSIM0.8743
17
Human Pose TransferDeepFashion In-shop Clothes Retrieval (test)
SSIM0.76
14
Pose-guided Human Image GenerationMarket 1501
R2G Score22.67
13
Hand gesture-to-gesture translationSenz3D (test)
FID24.6712
11
Person Image GenerationDeepFashion
FID18.547
11
Person Image SynthesisDeepFashion (test)
SSIM0.76
10
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