Adobe Inc.
Text-to-Visual Machine Learning Embedding Techniques

Last updated:

Abstract:

Text-to-visual machine learning embedding techniques are described that overcome the challenges of conventional techniques in a variety of ways. These techniques include use of query-based training data which may expand availability and types of training data usable to train a model. Generation of negative digital image samples is also described that may increase accuracy in training the model using machine learning. A loss function is also described that also supports increased accuracy and computational efficiency by losses separately, e.g., between positive or negative sample embeddings a text embedding.

Status:
Application
Type:

Utility

Filling date:

30 May 2019

Issue date:

3 Dec 2020