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Stochastic-binary convolutional neural networks with deterministic bit-streams
M. Hassan Najafi
, S. Rasoul Faraji
, Bingzhe Li
, David J. Lilja
,
Kia Bazargan
Mechanical Engineering
Electrical and Computer Engineering
Computer Science and Engineering
Research output
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Keyphrases
Bitstream
100%
Binary Convolutional Neural Network
100%
Classification Accuracy
50%
Proposed Design
50%
Energy Saving
25%
High Energy
25%
Energy Consumption
25%
Hardware Implementation
25%
Processing Time
25%
Random Bits
25%
LeNet-5
25%
Cost-effective Design
25%
Stream-based
25%
Energy-efficient Design
25%
Multiplication Operation
25%
Binary Design
25%
Convolutional Layer
25%
MINIST
25%
Engineering
Bitstream
100%
Convolutional Neural Network
100%
Misclassification Rate
25%
Convolutional Layer
25%
Fixed Points
25%
Processing Time
25%