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End-to-End Adversarial White Box Attacks on Music Instrument Classification
Published 29 Jul 2020 in eess.AS, cs.LG, and cs.SD | (2007.14714v1)
Abstract: Small adversarial perturbations of input data are able to drastically change performance of machine learning systems, thereby challenging the validity of such systems. We present the very first end-to-end adversarial attacks on a music instrument classification system allowing to add perturbations directly to audio waveforms instead of spectrograms. Our attacks are able to reduce the accuracy close to a random baseline while at the same time keeping perturbations almost imperceptible and producing misclassifications to any desired instrument.
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