Adobe Inc.
NEURAL NETWORKS FOR MULTI-LABEL CLASSIFICATION OF SEQUENTIAL DATA

Last updated:

Abstract:

Described techniques for multi-label classification, in which sequential data includes characters that have two or more aspects that require classification, are capable of providing separate classifications for different categories of components. Using an appropriately-trained neural network, the described techniques perform aligning and otherwise combining two or more classifications (e.g., categories, or types of labels) to obtain multi-label characters.

Status:
Application
Type:

Utility

Filling date:

17 Sep 2019

Issue date:

18 Mar 2021