Comparative Evaluation Framework for AI-Based Video Motion Capture Tools
AI 기반 비디오 모션캡처 도구 성능 비교 및 평가 프레임워크
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초록

With the rapid adoption of AI-based video motion capture tools in digital animation, understanding their comparative performance has become essential. This study presents a comparative performance analysis and practical evaluation framework for AI-based video motion capture tools. Rokoko Vision, DeepMotion, and Meshcapade were assessed for their perceived motion-tracking quality, gesture recognition, motion stability, and usability under standardized conditions using a single-camera setup and five representative motions, namely rotation, walking, squatting, jumping, and hand gestures. DeepMotion exhibited stronger upper-body and gesture fidelity, Meshcapade produced more anatomically consistent full-body motion, and Rokoko Vision offered stable baseline tracking with high accessibility. The proposed framework provides workflow-specific insights, particularly for previsualization, small-studio production, and animation education, thereby helping creators to select tools that align with their production goals.

키워드

모션 캡처로코코 비전딥모션메쉬카페이드애니메이션Motion CaptureRokoko VisionDeepMotionMeshcapadeAnimation
제목
Comparative Evaluation Framework for AI-Based Video Motion Capture Tools
제목 (타언어)
AI 기반 비디오 모션캡처 도구 성능 비교 및 평가 프레임워크
저자
갈평건정진헌
DOI
10.9728/dcs.2026.27.1.61
발행일
2026-01
유형
Y
저널명
디지털컨텐츠학회논문지
27
1
페이지
61 ~ 70