Adobe Inc.
UTILIZING DEEP RECURRENT NEURAL NETWORKS WITH LAYER-WISE ATTENTION FOR PUNCTUATION RESTORATION

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Abstract:

The present disclosure relates to utilizing a deep recurrent neural network for accurately performing punctuation restoration. For example, the disclosed systems can provide a sequence of words to a punctuation restoration neural network having multiple bi-directional recurrent layers and one or more neural attention mechanisms. In one or more embodiments, the punctuation restoration neural network incorporates layer-wise attentions and/or multi-head attention. The disclosed systems can utilize the punctuation restoration neural network to generate probabilities for each word, indicating the likelihood that each possible punctuation mark is associated with that word. Based on these probabilities, the disclosed systems can generate a punctuated transcript that includes punctuation before the appropriate words.

Status:
Application
Type:

Utility

Filling date:

14 May 2019

Issue date:

19 Nov 2020