Thu-1-4-8 Self-Supervised Contrastive Learning for Unsupervised Phoneme Segmentation

Felix Kreuk(Bar-Ilan University), Joseph Keshet(Bar-Ilan University) and Yossi Adi(Facebook AI Research)
Abstract: We propose a self-supervised representation learning model for the task of unsupervised phoneme boundary detection. The model is a convolutional neural network that operates directly on the raw waveform. It is optimized to identify spectral changes in the signal using the Noise-Contrastive Estimation principle. At test time, a peak detection algorithm is applied over the model outputs to produce the final boundaries. As such, the proposed model is trained in a fully unsupervised manner with no manual annotations in the form of target boundaries nor phonetic transcriptions. We compare the proposed approach to several unsupervised baselines using both TIMIT and Buckeye corpora. Results suggest that our approach surpasses the baseline models and reaches state-of-the-art performance on both data sets. Furthermore, we experimented with expanding the training set with additional examples from the Librispeech corpus. We evaluated the resulting model on distributions and languages (Hebrew and German) that were not seen during the training phase and showed that such training set expansion is beneficial for model performance under all settings
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