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Machine learning / Learning / Artificial intelligence / Statistical classification / Image processing / Data mining / Multiple kernel learning / Image segmentation / Kernel / K-nearest neighbors algorithm / Conditional random field / Outline of object recognition
Date: 2015-07-31 19:00:26
Machine learning
Learning
Artificial intelligence
Statistical classification
Image processing
Data mining
Multiple kernel learning
Image segmentation
Kernel
K-nearest neighbors algorithm
Conditional random field
Outline of object recognition

Multi-Class Object Localization by Combining Local Contextual Interactions Carolina Galleguillos† Brian McFee† Serge Belongie† Gert Lanckriet‡ † Computer Science and Engineering Department

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