Hüseyin Hacıhabiboğlu

1paper

1 Paper

SDMay 25, 2020
Speaker and Posture Classification using Instantaneous Intraspeech Breathing Features

Atıl İlerialkan, Alptekin Temizel, Hüseyin Hacıhabiboğlu

Acoustic features extracted from speech are widely used in problems such as biometric speaker identification and first-person activity detection. However, the use of speech for such purposes raises privacy issues as the content is accessible to the processing party. In this work, we propose a method for speaker and posture classification using intraspeech breathing sounds. Instantaneous magnitude features are extracted using the Hilbert-Huang transform (HHT) and fed into a CNN-GRU network for classification of recordings from the open intraspeech breathing sound dataset, BreathBase, that we collected for this study. Using intraspeech breathing sounds, 87% speaker classification, and 98% posture classification accuracy were obtained.