UtterIdNet is a DNN that delivers consistent speaker recognition on VoxCeleb for segments down to 250 ms, with reported gains over prior models especially at sub-second lengths.
Frame-level speaker embeddings for text-independent speaker recognition and analysis of end-to-end model
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abstract
In this paper, we propose a Convolutional Neural Network (CNN) based speaker recognition model for extracting robust speaker embeddings. The embedding can be extracted efficiently with linear activation in the embedding layer. To understand how the speaker recognition model operates with text-independent input, we modify the structure to extract frame-level speaker embeddings from each hidden layer. We feed utterances from the TIMIT dataset to the trained network and use several proxy tasks to study the networks ability to represent speech input and differentiate voice identity. We found that the networks are better at discriminating broad phonetic classes than individual phonemes. In particular, frame-level embeddings that belong to the same phonetic classes are similar (based on cosine distance) for the same speaker. The frame level representation also allows us to analyze the networks at the frame level, and has the potential for other analyses to improve speaker recognition.
fields
eess.AS 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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A Deep Neural Network for Short-Segment Speaker Recognition
UtterIdNet is a DNN that delivers consistent speaker recognition on VoxCeleb for segments down to 250 ms, with reported gains over prior models especially at sub-second lengths.