Acta Optica Sinica, Volume. 34, Issue 9, 915003(2014)
Using Random Forest for Occlusion Detection Based on Depth Image
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Zhang Shihui, Liu Jianxin, Kong Lingfu. Using Random Forest for Occlusion Detection Based on Depth Image[J]. Acta Optica Sinica, 2014, 34(9): 915003
Category: Machine Vision
Received: Mar. 3, 2014
Accepted: --
Published Online: Aug. 15, 2014
The Author Email: Shihui Zhang (sshhzz@ysu.edu.cn)