Maximum-Entropy Adversarial Audio Augmentation for Keyword Spotting
Data augmentation is a key tool for improving the performance of deep networks, particularly when there is limited labeled data. In some fields, such as computer vision, augmentation methods have been extensively studied; however, for speech and audio data, there are relatively fewer methods develop...
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Zusammenfassung: | Data augmentation is a key tool for improving the performance of deep
networks, particularly when there is limited labeled data. In some fields, such
as computer vision, augmentation methods have been extensively studied;
however, for speech and audio data, there are relatively fewer methods
developed. Using adversarial learning as a starting point, we develop a simple
and effective augmentation strategy based on taking the gradient of the entropy
of the outputs with respect to the inputs and then creating new data points by
moving in the direction of the gradient to maximize the entropy. We validate
its efficacy on several keyword spotting tasks as well as standard audio
benchmarks. Our method is straightforward to implement, offering greater
computational efficiency than more complex adversarial schemes like GANs.
Despite its simplicity, it proves robust and effective, especially when
combined with the established SpecAugment technique, leading to enhanced
performance. |
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DOI: | 10.48550/arxiv.2401.06897 |