Task-Driven Modular Networks for Zero-Shot Compositional Learning

ICCV 2019 Senthil PurushwalkamMaximilian NickelAbhinav GuptaMarc'Aurelio Ranzato

One of the hallmarks of human intelligence is the ability to compose learned knowledge into novel concepts which can be recognized without a single training example. In contrast, current state-of-the-art methods require hundreds of training examples for each possible category to build reliable and accurate classifiers... (read more)

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