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Locality enhanced dynamic biasing and sampling strategies for contextual ASR

23 January 2024
Md. Asif Jalal
Pablo Peso Parada
George Pavlidis
Vasileios Moschopoulos
Karthikeyan P. Saravanan
Chrysovalantis Kontoulis
Jisi Zhang
Anastasios Drosou
Gil Ho Lee
Jungin Lee
Seokyeong Jung
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Abstract

Automatic Speech Recognition (ASR) still face challenges when recognizing time-variant rare-phrases. Contextual biasing (CB) modules bias ASR model towards such contextually-relevant phrases. During training, a list of biasing phrases are selected from a large pool of phrases following a sampling strategy. In this work we firstly analyse different sampling strategies to provide insights into the training of CB for ASR with correlation plots between the bias embeddings among various training stages. Secondly, we introduce a neighbourhood attention (NA) that localizes self attention (SA) to the nearest neighbouring frames to further refine the CB output. The results show that this proposed approach provides on average a 25.84% relative WER improvement on LibriSpeech sets and rare-word evaluation compared to the baseline.

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