Auxiliary Interference Speaker Loss for Target-Speaker Speech Recognition

06/26/2019
by   Naoyuki Kanda, et al.
0

In this paper, we propose a novel auxiliary loss function for target-speaker automatic speech recognition (ASR). Our method automatically extracts and transcribes target speaker's utterances from a monaural mixture of multiple speakers speech given a short sample of the target speaker. The proposed auxiliary loss function attempts to additionally maximize interference speaker ASR accuracy during training. This will regularize the network to achieve a better representation for speaker separation, thus achieving better accuracy on the target-speaker ASR. We evaluated our proposed method using two-speaker-mixed speech in various signal-to-interference-ratio conditions. We first built a strong target-speaker ASR baseline based on the state-of-the-art lattice-free maximum mutual information. This baseline achieved a word error rate (WER) of 18.06 produced a completely corrupted result (WER of 84.71 further reduced the WER by 6.6 WER of 16.87 auxiliary output branch for the proposed loss can even be used for a secondary ASR for interference speakers' speech.

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