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Siamese 네트워크 기반 영상 객체 추적 기술 동향
Trends on Visual Object Tracking Using Siamese Network 원문보기

전자통신동향분석 = Electronics and telecommunications trends, v.37 no.1, 2022년, pp.73 - 83  

오지용 (로봇IT융합연구실) ,  이지은 (로봇IT융합연구실)

Abstract AI-Helper 아이콘AI-Helper

Visual object tracking can be utilized in various applications and has attracted considerable attention in the field of computer vision. Visual object tracking technology is classified in various ways based on the number of tracking objects and the methodologies employed for tracking algorithms. Thi...

주제어

표/그림 (7)

참고문헌 (36)

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