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Attention-based Fusion for Multi-source Human Image Generation

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arxiv 1905.02655 v1 pith:7GVBBB57 submitted 2019-05-07 cs.CV

Attention-based Fusion for Multi-source Human Image Generation

classification cs.CV
keywords generationimagehumanimagesmulti-sourceperson-imagesourcespecific
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present a generalization of the person-image generation task, in which a human image is generated conditioned on a target pose and a set X of source appearance images. In this way, we can exploit multiple, possibly complementary images of the same person which are usually available at training and at testing time. The solution we propose is mainly based on a local attention mechanism which selects relevant information from different source image regions, avoiding the necessity to build specific generators for each specific cardinality of X. The empirical evaluation of our method shows the practical interest of addressing the person-image generation problem in a multi-source setting.

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