Research Hub

대학 자원

대학 인프라와 자원을 공유해 공동 연구와 기술 활용을 지원합니다.

Loading...

논문 리스트

2019
Gesture-Based Emotion Recognition by 3D-CNN and LSTM with Keyframes Selection Gesture-Based Emotion Recognition by 3D-CNN and LSTM with Keyframes Selection
한국콘텐츠학회
김수형, 양형정 외 2명
논문정보
Publisher
International Journal of Contents
Issue Date
2019-12-31
Keywords
-
Citation
-
Source
-
Journal Title
-
Volume
15
Number
4
Start Page
59
End Page
64
DOI
ISSN
17386764
Abstract
In recent years, emotion recognition has been an interesting and challenging topic. Compared to facial expressions and speech modality, gesture-based emotion recognition has not received much attention with only a few efforts using traditional hand-crafted methods. These approaches require major computational costs and do not offer many opportunities for improvement as most of the science community is conducting their research based on the deep learning technique. In this paper, we propose an end-to-end deep learning approach for classifying emotions based on bodily gestures. In particular, the informative keyframes are first extracted from raw videos as input for the 3D-CNN deep network. The 3D-CNN exploits the short-term spatiotemporal information of gesture features from selected keyframes, and the convolutional LSTM networks learn the long-term feature from the features results of 3D-CNN. The experimental results on the FABO dataset exceed most of the traditional methods results and achieve state-of-the-art results for the deep learning-based technique for gesture-based emotion recognition.

저자 정보

이름 소속
김수형 인공지능학부
양형정 인공지능융합학과