Acta Optica Sinica, Volume. 37, Issue 2, 215001(2017)
A Fast Algorithm for Affordance Detection of Household Tool Parts Based on Structured Random Forest
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Wu Peiliang, Fu Weixing, Kong Lingfu. A Fast Algorithm for Affordance Detection of Household Tool Parts Based on Structured Random Forest[J]. Acta Optica Sinica, 2017, 37(2): 215001
Category: Machine Vision
Received: Aug. 9, 2016
Accepted: --
Published Online: Feb. 13, 2017
The Author Email: Peiliang Wu (peiliangwu@ysu.edu.cn)