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arxiv 2210.14252 v1 pith:OOEXUAQP submitted 2022-10-25 cs.SD eess.AS

Dynamic Speech Endpoint Detection with Regression Targets

classification cs.SD eess.AS
keywords speechend-pointingassistantsdetectiondevicesdynamicmethodmodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Interactive voice assistants have been widely used as input interfaces in various scenarios, e.g. on smart homes devices, wearables and on AR devices. Detecting the end of a speech query, i.e. speech end-pointing, is an important task for voice assistants to interact with users. Traditionally, speech end-pointing is based on pure classification methods along with arbitrary binary targets. In this paper, we propose a novel regression-based speech end-pointing model, which enables an end-pointer to adjust its detection behavior based on context of user queries. Specifically, we present a pause modeling method and show its effectiveness for dynamic end-pointing. Based on our experiments with vendor-collected smartphone and wearables speech queries, our strategy shows a better trade-off between endpointing latency and accuracy, compared to the traditional classification-based method. We further discuss the benefits of this model and generalization of the framework in the paper.

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