4.6 Review

A Review of Binarized Neural Networks

期刊

ELECTRONICS
卷 8, 期 6, 页码 -

出版社

MDPI
DOI: 10.3390/electronics8060661

关键词

Binarized Neural Networks; Deep Neural Networks; deep learning; FPGA; digital design; deep neural network compression

资金

  1. University Technology Acceleration Program (UTAG) of Utah Science Technology and Research (USTAR) of the State of Utah, U.S.A [172085]

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In this work, we review Binarized Neural Networks (BNNs). BNNs are deep neural networks that use binary values for activations and weights, instead of full precision values. With binary values, BNNs can execute computations using bitwise operations, which reduces execution time. Model sizes of BNNs are much smaller than their full precision counterparts. While the accuracy of a BNN model is generally less than full precision models, BNNs have been closing accuracy gap and are becoming more accurate on larger datasets like ImageNet. BNNs are also good candidates for deep learning implementations on FPGAs and ASICs due to their bitwise efficiency. We give a tutorial of the general BNN methodology and review various contributions, implementations and applications of BNNs.

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