2 research outputs found
Analyzing deep CNN-based utterance embeddings for acoustic model adaptation
We explore why deep convolutional neural networks (CNNs) with small
two-dimensional kernels, primarily used for modeling spatial relations in
images, are also effective in speech recognition. We analyze the
representations learned by deep CNNs and compare them with deep neural network
(DNN) representations and i-vectors, in the context of acoustic model
adaptation. To explore whether interpretable information can be decoded from
the learned representations we evaluate their ability to discriminate between
speakers, acoustic conditions, noise type, and gender using the Aurora-4
dataset. We extract both whole model embeddings (to capture the information
learned across the whole network) and layer-specific embeddings which enable
understanding of the flow of information across the network. We also use
learned representations as the additional input for a time-delay neural network
(TDNN) for the Aurora-4 and MGB-3 English datasets. We find that deep CNN
embeddings outperform DNN embeddings for acoustic model adaptation and
auxiliary features based on deep CNN embeddings result in similar word error
rates to i-vectors.Comment: accepted to SLT 201