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      Sequence-to-sequence Models for Small-Footprint Keyword Spotting

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          Abstract

          In this paper, we propose a sequence-to-sequence model for keyword spotting (KWS). Compared with other end-to-end architectures for KWS, our model simplifies the pipelines of production-quality KWS system and satisfies the requirement of high accuracy, low-latency, and small-footprint. We also evaluate the performances of different encoder architectures, which include LSTM and GRU. Experiments on the real-world wake-up data show that our approach outperforms the recently proposed attention-based end-to-end model. Specifically speaking, with 73K parameters, our sequence-to-sequence model achieves \(\sim\)3.05\% false rejection rate (FRR) at 0.1 false alarm (FA) per hour.

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          State-of-the-Art Speech Recognition with Sequence-to-Sequence Models

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            A Comparison of Sequence-to-Sequence Models for Speech Recognition

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              Small-footprint keyword spotting using deep neural networks

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                Author and article information

                Journal
                01 November 2018
                Article
                1811.00348
                bfa0c4c2-ca22-45b6-837f-3d03bb2a1742

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

                History
                Custom metadata
                Submitted to ICASSP 2019
                cs.SD eess.AS

                Electrical engineering,Graphics & Multimedia design
                Electrical engineering, Graphics & Multimedia design

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