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BCN2BRNO: ASR System Fusion for Albayzin 2020 Speech to Text Challenge

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arxiv 2101.12729 v1 pith:WWRO7VCW submitted 2021-01-29 eess.AS cs.CL

BCN2BRNO: ASR System Fusion for Albayzin 2020 Speech to Text Challenge

classification eess.AS cs.CL
keywords albayzinspeechsystemschallengeend-to-endfusionhybridmodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper describes joint effort of BUT and Telef\'onica Research on development of Automatic Speech Recognition systems for Albayzin 2020 Challenge. We compare approaches based on either hybrid or end-to-end models. In hybrid modelling, we explore the impact of SpecAugment layer on performance. For end-to-end modelling, we used a convolutional neural network with gated linear units (GLUs). The performance of such model is also evaluated with an additional n-gram language model to improve word error rates. We further inspect source separation methods to extract speech from noisy environment (i.e. TV shows). More precisely, we assess the effect of using a neural-based music separator named Demucs. A fusion of our best systems achieved 23.33% WER in official Albayzin 2020 evaluations. Aside from techniques used in our final submitted systems, we also describe our efforts in retrieving high quality transcripts for training.

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