2022
DOI: 10.48550/arxiv.2206.12322
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How to train accurate BNNs for embedded systems?

Abstract: A key enabler of deploying convolutional neural networks on resourceconstrained embedded systems is the binary neural network (BNN). BNNs save on memory and simplify computation by binarizing both features and weights. Unfortunately, binarization is inevitably accompanied by a severe decrease in accuracy. To reduce the accuracy gap between binary and full-precision networks, many repair methods have been proposed in the recent past, which we have classified and put into a single overview in this chapter. The r… Show more

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