WeKws: A production first small-footprint end-to-end Keyword Spotting Toolkit
Jie Wang (School of Marine Science and Technology, Northwestern Polytechnical University, Xi’an, China); Menglong Xu (Horizon Robotics); Jingyong Hou (Northwestern Polytechnical University); Binbin Zhang (Horizon Robotics); Zhang XiaoLei (Northwestern Polytechnical University); Lei Xie (NWPU); Fuping Pan (Horizon Robotics)
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Keyword spotting (KWS) enables speech-based user interaction and gradually becomes an indispensable component of smart devices.
Recently, end-to-end (E2E) methods have become the most popular approach for on-device KWS tasks.
However, there is still a gap between the research
and deployment of E2E KWS methods.
In this paper, we introduce WeKws, a production-quality, easy-to-build, and convenient-to-be-applied E2E KWS toolkit.
WeKws contains the implementations of several state-of-the-art backbone networks, making it achieve highly competitive results
on three publicly available datasets.
To make WeKws a pure E2E toolkit, we utilize a refined max-pooling loss to make the model learn the ending position of the keyword by itself, which significantly simplifies the training pipeline and makes WeKws very efficient to be applied in real-world scenarios.
The toolkit is publicly available at https://github.com/wenet-e2e/wekws.