BUT System for the Second DIHARD Speech Diarization Challenge

26 Feb 2020  ·  Landini Federico, Wang Shuai, Diez Mireia, Burget Lukáš, Matějka Pavel, Žmolíková Kateřina, Mošner Ladislav, Silnova Anna, Plchot Oldřich, Novotný Ondřej, Zeinali Hossein, Rohdin Johan ·

This paper describes the winning systems developed by the BUT team for the four tracks of the Second DIHARD Speech Diarization Challenge. For tracks 1 and 2 the systems were mainly based on performing agglomerative hierarchical clustering (AHC) of x-vectors, followed by another x-vector clustering based on Bayes hidden Markov model and variational Bayes inference. We provide a comparison of the improvement given by each step and share the implementation of the core of the system. For tracks 3 and 4 with recordings from the Fifth CHiME Challenge, we explored different approaches for doing multi-channel diarization and our best performance was obtained when applying AHC on the fusion of per channel probabilistic linear discriminant analysis scores.

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