There is a newer version of the record available.

Published June 15, 2017 | Version v2
Dataset Open

Pairwise Learning using Unsupervised Bottleneck Features for Zero-Resource Speech Challenge 2017 (System 1)

  • 1. Northwestern Polytechnical University
  • 2. Institute for Infocomm Research
  • 3. National University of Singapore

Description

The system is for track1 alone.  We trained an antoencoder using unsupervised bottleneck features with word-pair information from Switchboard. The unsupervised bottleneck features was extracted from an extractor of multi-task learning deep neural networks (MTL-DNN). The word-pair information was the ground truth from Switchboard. The final features are obtained from the third layer in our pairwise trained autoencoder.

Files

Files (8.1 GB)

Name Size Download all
md5:52021927048d26ac14470c972c3ffb99
8.1 GB Download