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Query-by-Example Keyword Spotting system using Multi-head Attention and Softtriple Loss

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This paper proposes a neural network architecture for tackling the query-by-example user-defined keyword spotting task. A multi-head attention module is added on top of a multi-layered GRU for effective feature extraction, and a normalized multi-head attention module is proposed for feature aggregation. We also adopt the softtriple loss - a combination of triplet loss and softmax loss - and showcase its effectiveness. We demonstrate the performance of our model on internal datasets with different languages and the public Hey-Snips dataset. We compare the performance of our model to a baseline system and conduct an ablation study to show the benefit of each component in our architecture. The proposed work shows solid performance while preserving simplicity.

Jinmiao Huang, Waseem Gharbieh, Han Suk Shim, Eugene Kim• 2021

Related benchmarks

TaskDatasetResultRank
Keyword SpottingLibriPhrase Easy (LPE)
EER28.74
13
Keyword SpottingLibriPhrase Hard (LPH)
EER0.4195
8
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