Shaking Acoustic Spectral Sub-Bands can Letxer Regularize Learning in Affective Computing.

2018 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP)(2018)

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摘要
In this work, we investigate a recently proposed regularization technique based on multi-branch architectures, called Shake-Shake regularization, for the task of speech emotion recognition. In addition, we also propose variants to incorporate domain knowledge into model configurations. The experimental results demonstrate: 1) independently shaking subbands delivers favorable models compared to shaking the entire spectral-temporal feature maps. 2) with proper patience in early stopping, the proposed models can simultaneously outperform the baseline and maintain a smaller performance gap between training and validation.
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关键词
Shake-Shake Regularization, Sub-band Shaking, Adversarial Training, Affective Computing, Speech Emotion Recognition
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