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Visual Object Recognition, Kristen Grauman
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更新于2023-03-16
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Kristen Grauman, MIT的高材生, 现在是UT,austin,computer vision 实验室的director, visual object recognition 方面的顶级专家, 和antonio, fei-fei li, Fergus等众多大牛有广泛的合作,这本书是她用于visual object recognition的讲义, 包括了computer vision 领域 物体识别最新最前沿的东西
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Bastian Leibe, RWTH Aachen University
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