2022
DOI: 10.3390/electronics11213578
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Identifying the Acoustic Source via MFF-ResNet with Low Sample Complexity

Abstract: Acoustic signal classification plays a central role in acoustic source identification. In practical applications, however, varieties of training data are typically inadequate, which leads to a low sample complexity. Applying classical deep learning methods to identify acoustic signals involves a large number of parameters in the classification model, which calls for great sample complexity. Therefore, low sample complexity modeling is one of the most important issues related to the performance of the acoustic … Show more

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