Texas Instruments Incorporated
REDUCED COMPLEXITY CONVOLUTION FOR CONVOLUTIONAL NEURAL NETWORKS

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Abstract:

A method for convolution in a convolutional neural network (CNN) is provided that includes accessing a coefficient value of a filter corresponding to an input feature map of a convolution layer of the CNN, and performing a block multiply accumulation operation on a block of data elements of the input feature map, the block of data elements corresponding to the coefficient value, wherein, for each data element of the block of data elements, a value of the data element is multiplied by the coefficient value and a result of the multiply is added to a corresponding data element in a corresponding output block of data elements comprised in an output feature map.

Status:
Application
Type:

Utility

Filling date:

24 May 2021

Issue date:

9 Sep 2021