TY - GEN
T1 - Unsupervised Representation Learning with Attention and Sequence to Sequence Autoencoders to Predict Sleepiness from Speech
AU - Amiriparian, Shahin
AU - Winokurow, Pawel
AU - Karas, Vincent
AU - Ottl, Sandra
AU - Gerczuk, Maurice
AU - Schuller, Björn
N1 - Publisher Copyright:
© 2020 ACM.
PY - 2020/10/16
Y1 - 2020/10/16
N2 - Motivated by the attention mechanism of the human visual system and recent developments in the field of machine translation, we introduce our attention-based and recurrent sequence to sequence autoencoders for fully unsupervised representation learning from audio files. In particular, we test the efficacy of our novel approach on the task of speech-based sleepiness recognition. We evaluate the learnt representations from both autoencoders, and conduct an early fusion to ascertain possible complementarity between them. In our frameworks, we first extract Mel-spectrograms from raw audio. Second, we train recurrent autoencoders on these spectrograms which are considered as time-dependent frequency vectors. Afterwards, we extract the activations of specific fully connected layers of the autoencoders which represent the learnt features of spectrograms for the corresponding audio instances. Finally, we train support vector regressors on these representations to obtain the predictions. On the development partition of the data, we achieve Spearman's correlation coefficients of .324, .283, and .320 with the targets on the Karolinska Sleepiness Scale by utilising attention and non-attention autoencoders, and the fusion of both autoencoders' representations, respectively. In the same order, we achieve .311, .359, and .367 Spearman's correlation coefficients on the test data, indicating the suitability of our proposed fusion strategy.
AB - Motivated by the attention mechanism of the human visual system and recent developments in the field of machine translation, we introduce our attention-based and recurrent sequence to sequence autoencoders for fully unsupervised representation learning from audio files. In particular, we test the efficacy of our novel approach on the task of speech-based sleepiness recognition. We evaluate the learnt representations from both autoencoders, and conduct an early fusion to ascertain possible complementarity between them. In our frameworks, we first extract Mel-spectrograms from raw audio. Second, we train recurrent autoencoders on these spectrograms which are considered as time-dependent frequency vectors. Afterwards, we extract the activations of specific fully connected layers of the autoencoders which represent the learnt features of spectrograms for the corresponding audio instances. Finally, we train support vector regressors on these representations to obtain the predictions. On the development partition of the data, we achieve Spearman's correlation coefficients of .324, .283, and .320 with the targets on the Karolinska Sleepiness Scale by utilising attention and non-attention autoencoders, and the fusion of both autoencoders' representations, respectively. In the same order, we achieve .311, .359, and .367 Spearman's correlation coefficients on the test data, indicating the suitability of our proposed fusion strategy.
KW - attention mechanism
KW - audio processing
KW - driver safety
KW - sequence to sequence autoencoders
KW - unsupervised representation learning
UR - http://www.scopus.com/inward/record.url?scp=85096091321&partnerID=8YFLogxK
U2 - 10.1145/3423327.3423670
DO - 10.1145/3423327.3423670
M3 - Conference contribution
AN - SCOPUS:85096091321
T3 - MuSe 2020 - Proceedings of the 1st International Multimodal Sentiment Analysis in Real-Life Media Challenge and Workshop
SP - 11
EP - 17
BT - MuSe 2020 - Proceedings of the 1st International Multimodal Sentiment Analysis in Real-Life Media Challenge and Workshop
PB - Association for Computing Machinery, Inc
T2 - 1st International Multimodal Sentiment Analysis in Real-Life Media Challenge and Workshop, MuSe 2020
Y2 - 16 October 2020
ER -