Voice2Series-Reprogramming
Acoustic model reprogramming
An approach to reprogramming acoustic models for time series classification using differential mel-spectrograms and adversarial training
ICML 21 - Voice2Series: Adversarial Reprogramming Acoustic Models for Time Series Classification
70 stars
3 watching
12 forks
Language: TypeScript
last commit: over 1 year ago deep-learningmachine-learningspeech-processingtime-seriestransfer-learning
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