TY - JOUR
T1 - Single-microphone deep envelope separation based auditory attention decoding for competing speech and music
AU - Tanveer, M Asjid
AU - Jensen, Jesper
AU - Tan, Zheng-Hua
AU - Østergaard, Jan
N1 - Creative Commons Attribution license.
PY - 2025/6
Y1 - 2025/6
N2 - Objective.In this study, we introduce an end-to-end single microphone deep learning system for source separation and auditory attention decoding (AAD) in a competing speech and music setup. Deep source separation is applied directly on the envelope of the observed mixed audio signal. The resulting separated envelopes are compared to the envelope obtained from the electroencephalography (EEG) signals via deep stimulus reconstruction, where Pearson correlation is used as a loss function for training and evaluation. Approach.Deep learning models for source envelope separation and AAD are trained on target/distractor pairs from speech and music, covering four cases: speech vs. speech, speech vs. music, music vs. speech, and music vs. music. We convolve 10 different HRTFs with our audio signals to simulate the effects of head, torso and outer ear, and evaluate our model's ability to generalize. The models are trained (and evaluated) on 20 s time windows extracted from 60 s EEG trials. Main results.We achieve a target Pearson correlation and accuracy of 0.122% and 82.4% on the original dataset and an average target Pearson correlation and accuracy of 0.106% and 75.4% across the 10 HRTF variants. For the distractor, we achieve an average Pearson correlation of 0.004. Additionally, our model gives an accuracy of 82.8%, 85.8%, 79.7% and 81.5% across the four aforementioned cases for speech and music. With perfectly separated envelopes, we can achieve an accuracy of 83.0%, which is comparable to the case of source separated envelopes. Significance.We conclude that the deep learning models for source envelope separation and AAD generalize well across the set of speech and music signals and HRTFs tested in this study. We notice that source separation performs worse for a mixed music and speech signal, but the resulting AAD performance is not impacted.
AB - Objective.In this study, we introduce an end-to-end single microphone deep learning system for source separation and auditory attention decoding (AAD) in a competing speech and music setup. Deep source separation is applied directly on the envelope of the observed mixed audio signal. The resulting separated envelopes are compared to the envelope obtained from the electroencephalography (EEG) signals via deep stimulus reconstruction, where Pearson correlation is used as a loss function for training and evaluation. Approach.Deep learning models for source envelope separation and AAD are trained on target/distractor pairs from speech and music, covering four cases: speech vs. speech, speech vs. music, music vs. speech, and music vs. music. We convolve 10 different HRTFs with our audio signals to simulate the effects of head, torso and outer ear, and evaluate our model's ability to generalize. The models are trained (and evaluated) on 20 s time windows extracted from 60 s EEG trials. Main results.We achieve a target Pearson correlation and accuracy of 0.122% and 82.4% on the original dataset and an average target Pearson correlation and accuracy of 0.106% and 75.4% across the 10 HRTF variants. For the distractor, we achieve an average Pearson correlation of 0.004. Additionally, our model gives an accuracy of 82.8%, 85.8%, 79.7% and 81.5% across the four aforementioned cases for speech and music. With perfectly separated envelopes, we can achieve an accuracy of 83.0%, which is comparable to the case of source separated envelopes. Significance.We conclude that the deep learning models for source envelope separation and AAD generalize well across the set of speech and music signals and HRTFs tested in this study. We notice that source separation performs worse for a mixed music and speech signal, but the resulting AAD performance is not impacted.
KW - Acoustic Stimulation/methods
KW - Adult
KW - Attention/physiology
KW - Auditory Perception/physiology
KW - Deep Learning
KW - Electroencephalography/methods
KW - Female
KW - Humans
KW - Male
KW - Music/psychology
KW - Speech Perception/physiology
KW - Speech/physiology
KW - Young Adult
KW - head related transfer functions
KW - auditory attention
KW - EEG
KW - source separation
KW - speech and music
KW - deep learning
UR - http://www.scopus.com/inward/record.url?scp=105004703981&partnerID=8YFLogxK
U2 - 10.1088/1741-2552/add0e7
DO - 10.1088/1741-2552/add0e7
M3 - Journal article
C2 - 40280149
SN - 1741-2560
VL - 22
JO - Journal of Neural Engineering
JF - Journal of Neural Engineering
IS - 3
M1 - 036006
ER -