Maximum Margin Multi-Instance Learning
Wang, Hua, Huang, Heng, Kamangar, Farhad, Nie, Feiping, Ding, Chris H.
–Neural Information Processing Systems
Multi-instance learning (MIL) considers input as bags of instances, in which labels areassigned to the bags. MIL is useful in many real-world applications. For example, in image categorization semantic meanings (labels) of an image mostly arise from its regions (instances) instead of the entire image (bag). Existing MIL methods typically build their models using the Bag-to-Bag (B2B) distance, which are often computationally expensive and may not truly reflect the semantic similarities. Totackle this, in this paper we approach MIL problems from a new perspective using the Class-to-Bag (C2B) distance, which directly assesses the relationships between the classes and the bags.
Neural Information Processing Systems
Dec-31-2011
- Technology: