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    비전 AI 기반 얼굴 및 행동 특징 융합을 통한 운전자 안전 모니터링 = Vision AI-Based Driver Safety Monitoring through Facial and Behavioral Feature Fusion

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    https://www.riss.kr/link?id=T17402307

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    다국어 초록 (Multilingual Abstract) kakao i 다국어 번역

    This study proposes a universal real-time state recognition system based on multi-feature fusion using the MediaPipe framework. Real-time monitoring technology for human concentration and arousal states plays a crucial role in various fields including traffic safety, industrial safety, online education, and healthcare. A significant portion of accidents are caused by human factors such as drowsiness and distraction. The proposed system extracts facial landmarks and body landmarks in real-time using MediaPipe Face Mesh and Pose models, calculating Eye Aspect Ratio, Mouth Aspect Ratio, Head Pose angles, shoulder angle, and arm position. The multi-feature fusion module normalizes extracted features using Min-Max normalization and integrates them through weighted fusion with state-specific optimized weights. Sliding window and hysteresis mechanisms are applied for temporal consistency. Performance evaluation results demonstrate significant improvements over single-feature methods in drowsiness detection, distraction detection, and complex scenarios. This study overcomes the limitations of single-feature approaches through multi-feature fusion, achieving both high recognition accuracy and real-time processing performance. The weight-based approach ensures explainability, implementing a transparent system applicable to various fields. The system was designed as a universal framework applicable to multiple application areas rather than being limited to a specific application.
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    This study proposes a universal real-time state recognition system based on multi-feature fusion using the MediaPipe framework. Real-time monitoring technology for human concentration and arousal states plays a crucial role in various fields including...

    This study proposes a universal real-time state recognition system based on multi-feature fusion using the MediaPipe framework. Real-time monitoring technology for human concentration and arousal states plays a crucial role in various fields including traffic safety, industrial safety, online education, and healthcare. A significant portion of accidents are caused by human factors such as drowsiness and distraction. The proposed system extracts facial landmarks and body landmarks in real-time using MediaPipe Face Mesh and Pose models, calculating Eye Aspect Ratio, Mouth Aspect Ratio, Head Pose angles, shoulder angle, and arm position. The multi-feature fusion module normalizes extracted features using Min-Max normalization and integrates them through weighted fusion with state-specific optimized weights. Sliding window and hysteresis mechanisms are applied for temporal consistency. Performance evaluation results demonstrate significant improvements over single-feature methods in drowsiness detection, distraction detection, and complex scenarios. This study overcomes the limitations of single-feature approaches through multi-feature fusion, achieving both high recognition accuracy and real-time processing performance. The weight-based approach ensures explainability, implementing a transparent system applicable to various fields. The system was designed as a universal framework applicable to multiple application areas rather than being limited to a specific application.

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    목차 (Table of Contents)

    • Ⅰ. 서론 1
    • 1. 연구 배경 및 필요성 1
    • 2. 연구 목적 4
    • 3. 관련 연구 6
    • Ⅱ. 이론적 배경 8
    • Ⅰ. 서론 1
    • 1. 연구 배경 및 필요성 1
    • 2. 연구 목적 4
    • 3. 관련 연구 6
    • Ⅱ. 이론적 배경 8
    • 1. MediaPipe 프레임워크 8
    • 2. 랜드마크 기반 상태 인식 10
    • 3. 멀티 피쳐 융합 기법 14
    • Ⅲ. 시스템 설계 및 구현 16
    • 1. 시스템 전체 구조 16
    • 2. 운전자 모니터링 응용 20
    • 3. 제조 현장 응용 시스템 22
    • Ⅳ. 실험 및 결과 분석 24
    • 1. 실험 평가 지표 및 결과 25
    • 2. 유지 시간에 따른 성능 비교 30
    • V. 결론 39
    • 참고문헌 41
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