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Deep learning, especially in the form of convolutional neural networks (CNNs), has triggered substantial improvements in computer vision and related fields in recent years. This progress is attributed to the shift from designing features and subsequent individual sub-systems towards learning features and recognition systems end to end from nearly unprocessed data. For speaker clustering, however, it is still common to use handcrafted processing chains such as MFCC features and GMM-based models. In this paper, we use simple spectrograms as input to a CNN and study the optimal design of those networks for speaker identification and clustering. Furthermore, we elaborate on the question how to transfer a network, trained for speaker identification, to speaker clustering. We demonstrate our approach on the well known TIMIT dataset, achieving results comparable with the state of the art-without the need for handcrafted features.
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Yanick Xavier Lukic
University of St.Gallen
Carlo Vogt
ZHAW Zurich University of Applied Sciences
Oliver Dürr
University of Fribourg
ZHAW Zurich University of Applied Sciences
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Lukic et al. (Thu,) studied this question.
synapsesocial.com/papers/69d6cb5e75cae9790bed8be7 — DOI: https://doi.org/10.1109/mlsp.2016.7738816