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Hierarchically-Attentive RNN for Album Summarization and Storytelling

About

We address the problem of end-to-end visual storytelling. Given a photo album, our model first selects the most representative (summary) photos, and then composes a natural language story for the album. For this task, we make use of the Visual Storytelling dataset and a model composed of three hierarchically-attentive Recurrent Neural Nets (RNNs) to: encode the album photos, select representative (summary) photos, and compose the story. Automatic and human evaluations show our model achieves better performance on selection, generation, and retrieval than baselines.

Licheng Yu, Mohit Bansal, Tamara L. Berg• 2017

Related benchmarks

TaskDatasetResultRank
Visual StorytellingVIST (test)
METEOR34.1
38
Story GenerationVIST 400 albums (test)
Preference Rate70.5
6
Visual StorytellingVIST album level 1.0 (test)
METEOR34.1
6
Story GenerationVisual Storytelling Dataset (test)
BLEU-321.02
5
Album RetrievalVisual Storytelling Dataset (VIST) 1000 albums
R@118.4
4
Album SummarizationVIST (test)
Precision45.51
4
Visual StorytellingVIST
METEOR34.1
3
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