
By 2030, one-shot learning allows AI to recognize new objects in diverse settings from a single image?
1
50Ṁ652030
74%
chance
1H
6H
1D
1W
1M
ALL
By 2030, One-shot learning allows AI to recognize new objects in diverse settings from a single image, advancing beyond current models that need hundreds of examples.
One-shot learning: see only one labeled image of a new object, and then be able to recognize the object in real world scenes, to the extent that a typical human can (i.e. including in a wide variety of settings).
For example, see only one image of a platypus, and then be able to recognize platypuses in nature photos.
The system may train on labeled images of other objects.
Currently, deep networks often need hundreds of examples in classification tasks, but there has been work on one-shot learning for both classification and generative task.
This question is managed and resolved by Manifold.
Get
1,000 to start trading!
People are also trading
Related questions
By 2028, AI will be able to classify images of unseen objects into groups, having trained on a similar distinct dataset?
74% chance
By 2025 end, a model exhibits action recognition (video) equivalent to human level accuracy on Something Something V2?
60% chance
Which of the following breakthroughs will Deepmind achieve by 2030?