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Character-Centric Story Visualization via Visual Planning and Token Alignment

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arxiv 2210.08465 v4 pith:IYPH7PLM submitted 2022-10-16 cs.CV cs.CL

Character-Centric Story Visualization via Visual Planning and Token Alignment

classification cs.CV cs.CL
keywords storycharactersimagetokenvisualvisualizationalignmentchallenge
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Story visualization advances the traditional text-to-image generation by enabling multiple image generation based on a complete story. This task requires machines to 1) understand long text inputs and 2) produce a globally consistent image sequence that illustrates the contents of the story. A key challenge of consistent story visualization is to preserve characters that are essential in stories. To tackle the challenge, we propose to adapt a recent work that augments Vector-Quantized Variational Autoencoders (VQ-VAE) with a text-tovisual-token (transformer) architecture. Specifically, we modify the text-to-visual-token module with a two-stage framework: 1) character token planning model that predicts the visual tokens for characters only; 2) visual token completion model that generates the remaining visual token sequence, which is sent to VQ-VAE for finalizing image generations. To encourage characters to appear in the images, we further train the two-stage framework with a character-token alignment objective. Extensive experiments and evaluations demonstrate that the proposed method excels at preserving characters and can produce higher quality image sequences compared with the strong baselines. Codes can be found in https://github.com/sairin1202/VP-CSV

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