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arxiv: 1803.10916 · v1 · pith:72PWH4IQnew · submitted 2018-03-29 · 💻 cs.SD · cs.CL· eess.AS

Attention-based End-to-End Models for Small-Footprint Keyword Spotting

classification 💻 cs.SD cs.CLeess.AS
keywords encoderapproachattention-basedkeywordattentioncrnnend-to-endfalse
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In this paper, we propose an attention-based end-to-end neural approach for small-footprint keyword spotting (KWS), which aims to simplify the pipelines of building a production-quality KWS system. Our model consists of an encoder and an attention mechanism. The encoder transforms the input signal into a high level representation using RNNs. Then the attention mechanism weights the encoder features and generates a fixed-length vector. Finally, by linear transformation and softmax function, the vector becomes a score used for keyword detection. We also evaluate the performance of different encoder architectures, including LSTM, GRU and CRNN. Experiments on real-world wake-up data show that our approach outperforms the recent Deep KWS approach by a large margin and the best performance is achieved by CRNN. To be more specific, with ~84K parameters, our attention-based model achieves 1.02% false rejection rate (FRR) at 1.0 false alarm (FA) per hour.

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