Interrupted and cascaded permutation invariant training for speech separation

28 Oct 2019  ·  Gene-Ping Yang, Szu-Lin Wu, Yao-Wen Mao, Hung-Yi Lee, Lin-shan Lee ·

Permutation Invariant Training (PIT) has long been a stepping stone method for training speech separation model in handling the label ambiguity problem. With PIT selecting the minimum cost label assignments dynamically, very few studies considered the separation problem to be optimizing both the model parameters and the label assignments, but focused on searching for good model architecture and parameters. In this paper, we investigate instead for a given model architecture the various flexible label assignment strategies for training the model, rather than directly using PIT. Surprisingly, we discover a significant performance boost compared to PIT is possible if the model is trained with fixed label assignments and a good set of labels is chosen. With fixed label training cascaded between two sections of PIT, we achieved the state-of-the-art performance on WSJ0-2mix without changing the model architecture at all.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Speech Separation WSJ0-2mix IAC-PIT Tasnet SI-SDRi 17.5 # 22

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