An Interactive System Using Gesture Recognition for Multimedia Performance

멀티미디어 공연을 위한 동작 인식 시스템

초록

This study focused on developing an interactive system that utilizes machine learning to classify gestures, thereby integrating them into multimedia performances incorporating music, visuals, and dance. The researchers used an iPhone and CoreML in conjunction with a dedicated app designed to classify gestures and communicated the detected gestures and their corresponding levels through a network. The transmitted data are then utilized to control the music and visuals displayed on a computer as part of the interactive multimedia performance. By employing this innovative approach, the study aims to streamline the production of immersive and engaging performances, ultimately enhancing the overall experience for both performers and the audience. This integration of technology and art has the potential to revolutionize the way interactive multimedia performances are created and experienced.

키워드

Gesture RecognitionMachine LearningMusicVisualsDance
제목
An Interactive System Using Gesture Recognition for Multimedia Performance
제목 (타언어)
멀티미디어 공연을 위한 동작 인식 시스템
저자
이관규김준
DOI
10.9728/dcs.2025.26.1.61
발행일
2025-01
저널명
디지털컨텐츠학회논문지
26
1
페이지
61 ~ 68