The DKU System Description for The Interspeech 2021 Auto-KWS Challenge
This paper introduces the system submitted by the DKU-SMIIP team for the Auto-KWS 2021 Challenge. Our implementation consists of a two-stage keyword spotting system based on query-by-example spoken term detection and a speaker verification system. We employ two different detection algorithms in our...
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Zusammenfassung: | This paper introduces the system submitted by the DKU-SMIIP team for the
Auto-KWS 2021 Challenge. Our implementation consists of a two-stage keyword
spotting system based on query-by-example spoken term detection and a speaker
verification system. We employ two different detection algorithms in our
proposed keyword spotting system. The first stage adopts subsequence dynamic
time warping for template matching based on frame-level language-independent
bottleneck feature and phoneme posterior probability. We use a sliding window
template matching algorithm based on acoustic word embeddings to further verify
the detection from the first stage. As a result, our KWS system achieves an
average score of 0.61 on the feedback dataset, which outperforms the baseline1
system by 0.25. |
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DOI: | 10.48550/arxiv.2104.04993 |