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학술대회 Object Tracking using Plenoptic Image Sequences
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저자
김재우, 배성준, 박성진, 김도형
발행일
201705
출처
SPIE Commercial + Scientific Sensing and Imaging 2017 (SPIE 10219), pp.1-6
DOI
https://dx.doi.org/10.1117/12.2264431
협약과제
17HS1100, 차세대 플렌옵틱 콘텐츠 제작 플랫폼 기술 개발, 김도형
초록
Object tracking is a very important problem in computer vision research. Among the difficulties of object tracking, partial occlusion problem is one of the most serious and challenging problems. To address the problem, we proposed novel approaches to object tracking on plenoptic image sequences. Our approaches take advantage of the refocusing capability that plenoptic images provide. Our approaches input the sequences of focal stacks constructed from plenoptic image sequences. The proposed image selection algorithms select the sequence of optimal images that can maximize the tracking accuracy from the sequence of focal stacks. Focus measure approach and confidence measure approach were proposed for image selection and both of the approaches were validated by the experiments using thirteen plenoptic image sequences that include heavily occluded target objects. The experimental results showed that the proposed approaches were satisfactory comparing to the conventional 2D object tracking algorithms.
KSP 제안 키워드
Computer Vision(CV), Confidence measure, Focal stacks, Image selection, Image sequence, Partial Occlusion, Plenoptic image, challenging problems, focus measure, object Tracking, occluded target