What Did I Just Hear? Detecting Pornographic Sounds in Adult Videos Using Neural NetworksOpen Website

Published: 01 Jan 2022, Last Modified: 02 May 2023Audio Mostly Conference 2022Readers: Everyone
Abstract: Audio-based pornographic detection enables efficient adult content filtering without sacrificing performance by exploiting distinct spectral characteristics. To improve it, we explore pornographic sound modeling based on different neural architectures and acoustic features. We find that CNN trained on log mel spectrogram achieves the best performance on Pornography-800 dataset. Our experiment results also show that log mel spectrogram allows better representations for the models to recognize pornographic sounds. Finally, to classify whole audio waveforms rather than segments, we employ voting segment-to-audio technique that yields the best audio-level detection results.
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