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Commonsense Knowledge Aware Concept Selection For Diverse and Informative Visual Storytelling

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arxiv 2102.02963 v1 pith:3NCPFDNU submitted 2021-02-05 cs.CV cs.CL

Commonsense Knowledge Aware Concept Selection For Diverse and Informative Visual Storytelling

classification cs.CV cs.CL
keywords conceptsconceptdiversityimagemodelstoriesstorycandidate
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Visual storytelling is a task of generating relevant and interesting stories for given image sequences. In this work we aim at increasing the diversity of the generated stories while preserving the informative content from the images. We propose to foster the diversity and informativeness of a generated story by using a concept selection module that suggests a set of concept candidates. Then, we utilize a large scale pre-trained model to convert concepts and images into full stories. To enrich the candidate concepts, a commonsense knowledge graph is created for each image sequence from which the concept candidates are proposed. To obtain appropriate concepts from the graph, we propose two novel modules that consider the correlation among candidate concepts and the image-concept correlation. Extensive automatic and human evaluation results demonstrate that our model can produce reasonable concepts. This enables our model to outperform the previous models by a large margin on the diversity and informativeness of the story, while retaining the relevance of the story to the image sequence.

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