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Vestias, 2021 - Google Patents

Efficient design of pruned convolutional neural networks on fpga

Vestias, 2021

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Document ID
2633897417297303560
Author
Vestias M
Publication year
Publication venue
Journal of Signal Processing Systems

External Links

Snippet

Abstract Convolutional Neural Networks (CNNs) have improved several computer vision applications, like object detection and classification, when compared to other machine learning algorithms. Running these models in edge computing devices close to data …
Continue reading at repositorio.ipl.pt (PDF) (other versions)

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