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LSTM-based Whisper Detection

Authors :
Raeesy, Zeynab
Gillespie, Kellen
Yang, Zhenpei
Ma, Chengyuan
Drugman, Thomas
Gu, Jiacheng
Maas, Roland
Rastrow, Ariya
Hoffmeister, Björn
Publication Year :
2018

Abstract

This article presents a whisper speech detector in the far-field domain. The proposed system consists of a long-short term memory (LSTM) neural network trained on log-filterbank energy (LFBE) acoustic features. This model is trained and evaluated on recordings of human interactions with voice-controlled, far-field devices in whisper and normal phonation modes. We compare multiple inference approaches for utterance-level classification by examining trajectories of the LSTM posteriors. In addition, we engineer a set of features based on the signal characteristics inherent to whisper speech, and evaluate their effectiveness in further separating whisper from normal speech. A benchmarking of these features using multilayer perceptrons (MLP) and LSTMs suggests that the proposed features, in combination with LFBE features, can help us further improve our classifiers. We prove that, with enough data, the LSTM model is indeed as capable of learning whisper characteristics from LFBE features alone compared to a simpler MLP model that uses both LFBE and features engineered for separating whisper and normal speech. In addition, we prove that the LSTM classifiers accuracy can be further improved with the incorporation of the proposed engineered features.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1809.07832
Document Type :
Working Paper