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Auteurs principaux: Zhao, Jingwei, Wen, Yuhua, Li, Qifei, Hu, Minchi, Zhou, Yingying, Xue, Jingyao, Wu, Junyang, Gao, Yingming, Wen, Zhengqi, Tao, Jianhua, Li, Ya
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2507.22934
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author Zhao, Jingwei
Wen, Yuhua
Li, Qifei
Hu, Minchi
Zhou, Yingying
Xue, Jingyao
Wu, Junyang
Gao, Yingming
Wen, Zhengqi
Tao, Jianhua
Li, Ya
author_facet Zhao, Jingwei
Wen, Yuhua
Li, Qifei
Hu, Minchi
Zhou, Yingying
Xue, Jingyao
Wu, Junyang
Gao, Yingming
Wen, Zhengqi
Tao, Jianhua
Li, Ya
contents Intent recognition aims to identify users' underlying intentions, traditionally focusing on text in natural language processing. With growing demands for natural human-computer interaction, the field has evolved through deep learning and multimodal approaches, incorporating data from audio, vision, and physiological signals. Recently, the introduction of Transformer-based models has led to notable breakthroughs in this domain. This article surveys deep learning methods for intent recognition, covering the shift from unimodal to multimodal techniques, relevant datasets, methodologies, applications, and current challenges. It provides researchers with insights into the latest developments in multimodal intent recognition (MIR) and directions for future research.
format Preprint
id arxiv_https___arxiv_org_abs_2507_22934
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Deep Learning Approaches for Multimodal Intent Recognition: A Survey
Zhao, Jingwei
Wen, Yuhua
Li, Qifei
Hu, Minchi
Zhou, Yingying
Xue, Jingyao
Wu, Junyang
Gao, Yingming
Wen, Zhengqi
Tao, Jianhua
Li, Ya
Computation and Language
Artificial Intelligence
Intent recognition aims to identify users' underlying intentions, traditionally focusing on text in natural language processing. With growing demands for natural human-computer interaction, the field has evolved through deep learning and multimodal approaches, incorporating data from audio, vision, and physiological signals. Recently, the introduction of Transformer-based models has led to notable breakthroughs in this domain. This article surveys deep learning methods for intent recognition, covering the shift from unimodal to multimodal techniques, relevant datasets, methodologies, applications, and current challenges. It provides researchers with insights into the latest developments in multimodal intent recognition (MIR) and directions for future research.
title Deep Learning Approaches for Multimodal Intent Recognition: A Survey
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2507.22934