Challenge: Automated visual storytelling models do not make extensive use of external knowledge and iterative generation when attempting to create stories.
Approach: They propose a framework that uses an image sequence as a story graph to create a coherent story.
Outcome: The proposed framework produces stories superior in diversity, coherence, and humanness . it uses plotting and reworking to improve the model's performance, the authors say .

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Challenge: Existing methods for storytelling lack coherence and consistency, compromising the overall storytelling experience.
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Challenge: Visual storytelling aims to automatically generate a coherent story based on a given image sequence.
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Challenge: Existing models focus on enhancing the representation of image sequences, but the stories are repetitive, illogical, and lacking in detail.
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Challenge: Automated story generation aims to produce coherent, engaging, and contextually consistent narratives with minimal or no human involvement . despite advances in large language models, maintaining narrative coherence, character consistency, storyline diversity, and plot controllability in generating stories is still challenging.
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Challenge: Existing methods for visual storytelling construct text description independently for each image and roughly concatenate them as a story, which leads to the problem of generating semantically incoherent content.
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Challenge: Existing methods for visual storytelling ignore latent topic information.
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Visual Story Post-Editing (P19-1)

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Challenge: a dataset for human edits of machine-generated visual stories is released . it includes 14,905 human-edited versions of 2,981 machine- generated visual stories .
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Challenge: Visual storytelling is a task of generating a story for a sequence of several temporally-ordered images or video frames.
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Challenge: Data-driven storytelling uses visual aids and visualizations to convey insights.
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Challenge: Existing methods for visual storytelling suffer from low inference speed and are not well-suited for synthetic scenes.
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