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Efficient source separation using bitwise neural networks
Minje Kim
,
Paris Smaragdis
Electrical and Computer Engineering
Coordinated Science Lab
Siebel School of Computing and Data Science
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Dive into the research topics of 'Efficient source separation using bitwise neural networks'. Together they form a unique fingerprint.
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Keyphrases
Binary Weights
50%
Bitwise Neural Networks
100%
Bitwise Operation
50%
Compact Form
50%
Deep Neural Network
50%
Denoising
50%
Dictionary
50%
Iteration-free
50%
Network Complexity
50%
Neural Network
50%
Quality Loss
50%
Quantized Input
50%
Real-time Processing
50%
Separation Algorithm
50%
Single-channel Blind Source Separation (SCBSS)
50%
Source Separation
100%
Source-separation System
50%
Source-specific
50%
Weight Matrix
50%
Engineering
Compact Form
33%
Deep Neural Network
33%
Feedforward
100%
Input Signal
33%
Single Channel
33%
Source Separation
100%
Computer Science
de-noising
33%
Deep Neural Network
33%
Neural Network
100%
Source Separation
100%
Time Processing
33%