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Building a Robust Appearance Model for Object Tracking
所属机构名称:华中科技大学
会议名称:International Conference on Artificial Intelligence and Computational Intelligence
成果类型:会议
会场:Shanghai, PEOPLES R CHINA
相关项目:广义凸分解理论及应用
作者:
Feng, Bin|Yao, Zhijun|Wang, Junwei|Liu, Wenyu|
同会议论文项目
广义凸分解理论及应用
期刊论文 23
会议论文 30
专利 3
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