Analysis Of X-Vectors For Low-Resource Speech Recognition
Martin Karafiat, Karel Vesely, Jan ",Honza", Cernocky, Jan Profant, Jiri Nytra, Miroslav Hlavacek, Tomas Pavlicek
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The paper presents a study of usability of x-vectors for adaptation of automatic speech recognition (ASR) systems. X-vectors are Neural Network (NN)-based speaker embeddings recently proposed in speaker recognition (SR). They quickly replaced common i-vectors and became new state-of-the-art technique. Here, the same approach is adopted for ASR with the hope of similar outcome. All experiments were done ASR for the latest IARPA MATERIAL evaluation running on Pashto language. Over 1% absolute improvement was observed with x-vectors over traditional i-vectors, even when the x-vector extractor was not trained on target Pashto data.
Chairs:
Shinji Watanabe