NVIDIA Corporation
Transforming convolutional neural networks for visual sequence learning

Last updated:

Abstract:

A method, computer readable medium, and system are disclosed for visual sequence learning using neural networks. The method includes the steps of replacing a non-recurrent layer within a trained convolutional neural network model with a recurrent layer to produce a visual sequence learning neural network model and transforming feedforward weights for the non-recurrent layer into input-to-hidden weights of the recurrent layer to produce a transformed recurrent layer. The method also includes the steps of setting hidden-to-hidden weights of the recurrent layer to initial values and processing video image data by the visual sequence learning neural network model to generate classification or regression output data.

Status:
Grant
Type:

Utility

Filling date:

25 Jan 2018

Issue date:

29 Jun 2021