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SMILE: Multimodal Dataset for Understanding Laughter in Video with Language Models

A dataset and baseline model leveraging large language models for understanding the reasons behind laughter in videos are introduced.

Year
2023
Venue
arXiv 2023
Authors
5
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arxiv.org/abs/2312.09818v3ARXIV-DEFAULT
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Abstract

Despite the recent advances of the artificial intelligence, building social intelligence remains a challenge. Among social signals, laughter is one of the distinctive expressions that occurs during social interactions between humans. In this work, we tackle a new challenge for machines to understand the rationale behind laughter in video, Video Laugh Reasoning. We introduce this new task to explain why people laugh in a particular video and a dataset for this task. Our proposed dataset, SMILE, comprises video clips and language descriptions of why people laugh. We propose a baseline by leveraging the reasoning capacity of large language models (LLMs) with textual video representation. Experiments show that our baseline can generate plausible explanations for laughter. We further investigate the scalability of our baseline by probing other video understanding tasks and in-the-wild videos. We release our dataset, code, and model checkpoints on https://github.com/postech-ami/SMILE-Dataset.

Authors

5