DGU-HAU: A Dataset for 3D Human Action Analysis on Utterances

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초록

Constructing diverse and complex multi-modal datasets is crucial for advancing human action analysis research, providing ground truth annotations for training deep learning networks, and enabling the development of robust models across real-world scenarios. Generating natural and contextually appropriate nonverbal gestures is essential for enhancing immersive and effective human-computer interactions in various applications. These applications include video games, embodied virtual assistants, and conversations within a metaverse. However, existing speech-related human datasets are focused on style transfer, so they have limitations that make them unsuitable for 3D human action analysis studies, such as human action recognition and generation. Therefore, we introduce a novel multi-modal dataset, DGU-HAU, a dataset for 3D human action on utterances that commonly occurs during daily life. We validate the dataset using a human action generation model, Action2Motion (A2M), a state-of-the-art 3D human action generation model.

키워드

3D human action analysishuman activity understandingmotion capturemulti-modal datasetutterance dataset
제목
DGU-HAU: A Dataset for 3D Human Action Analysis on Utterances
저자
Park, JihoPark, KwangryeolKim, Dongho
DOI
10.3390/electronics12234793
발행일
2023-12
유형
Article
저널명
Electronics
12
23
페이지
1 ~ 15