Approach | Eval 1 | Eval 2 | Eval 3 | Eval 4 |
---|---|---|---|---|
Downsampling | 0.081 | 0.245 | ||
Reference vector | 0.365 | |||
Correspondence Autoencoder | 0.469 | |||
Siamese CNN | 0.549 | |||
Siamese LSTM | 0.671 | 0.559 | ||
Seq2Seq Autoencoder | 0.262 | |||
Multi-view embeddings | 0.806 | 0.791 | ||
Phonetically-associated Siamese network | 0.714 | |||
Seq2Seq Correspondence Autoencoder | 0.511 | |||
Multi-view Encoder-Decoder embeddings | 0.879 |
Last active
March 3, 2020 12:20
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AWE approaches - AP scores
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