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Audio Spoofing Verification using Deep Convolutional Neural Networks by Transfer Learning

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Automatic Speaker Verification systems are gaining popularity these days; spoofing attacks are of prime concern as they make these systems vulnerable. Some spoofing attacks like Replay attacks are easier to implement but are very hard to detect thus creating the need for suitable countermeasures. In this paper, we propose a speech classifier based on deep-convolutional neural network to detect spoofing attacks. Our proposed methodology uses acoustic time-frequency representation of power spectral densities on Mel frequency scale (Mel-spectrogram), via deep residual learning (an adaptation of ResNet-34 architecture). Using a single model system, we have achieved an equal error rate (EER) of 0.9056% on the development and 5.32% on the evaluation dataset of logical access scenario and an equal error rate (EER) of 5.87% on the development and 5.74% on the evaluation dataset of physical access scenario of ASVspoof 2019.

Rahul T P, P R Aravind, Ranjith C, Usamath Nechiyil, Nandakumar Paramparambath• 2020

Related benchmarks

TaskDatasetResultRank
Audio Spoofing DetectionASVspoof Logical Access 2019 (Evaluation)
EER5.32
30
Audio Spoofing DetectionASVspoof Physical Access 2019 (Evaluation)
EER5.74
3
Audio Spoofing DetectionASVspoof Logical Access 2019 (dev)
EER0.9036
1
Audio Spoofing DetectionASVspoof Physical Access 2019 (dev)
EER5.87
1
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