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Parameterization of Sequence of MFCCs for DNN-based voice disorder detection

14 December 2018
Tomasz Grzywalski
Adam Maciaszek
Adam Biniakowski
Jan Orwat
S. Drgas
Mateusz Piecuch
Riccardo Belluzzo
Krzysztof Joachimiak
Dawid Niemiec
Jakub Ptaszynski
Krzysztof Szarzynski
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Abstract

In this article a DNN-based system for detection of three common voice disorders (vocal nodules, polyps and cysts; laryngeal neoplasm; unilateral vocal paralysis) is presented. The input to the algorithm is (at least 3-second long) audio recording of sustained vowel sound /a:/. The algorithm was developed as part of the "2018 FEMH Voice Data Challenge" organized by Far Eastern Memorial Hospital and obtained score value (defined in the challenge specification) of 77.44. This was the second best result before final submission. Final challenge results are not yet known during writing of this document. The document also reports changes that were made for the final submission which improved the score value in cross-validation by 0.6% points.

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