Adobe Inc.
CLASSIFYING DIGITAL IMAGES IN FEW-SHOT TASKS BASED ON NEURAL NETWORKS TRAINED USING MANIFOLD MIXUP REGULARIZATION AND SELF-SUPERVISION

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Abstract:

The present disclosure relates to systems, methods, and non-transitory computer readable media for training a classification neural network to classify digital images in few-shot tasks based on self-supervision and manifold mixup. For example, the disclosed systems can train a feature extractor as part of a base neural network utilizing self-supervision and manifold mixup. Indeed, the disclosed systems can apply manifold mixup regularization over a feature manifold learned via self-supervised training such as rotation training or exemplar training. Based on training the feature extractor, the disclosed systems can also train a classifier to classify digital images into novel classes not present within the base classes used to train the feature extractor.

Status:
Application
Type:

Utility

Filling date:

23 Oct 2019

Issue date:

29 Apr 2021