Background subtraction based on Gaussian mixture models using color and depth information
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Byung-Geun Lee | Jongmin Yu | SeungJong Noh | Young-Min Song | Cheon-wi Park | Cheonwi Park | Jongmin Yu | SeungJong Noh | Young-min Song | Byung-Geun Lee
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