使用深度学习架构进行盗版检测的无监督特征学习

Michele Buccoli, Paolo Bestagini, M. Zanoni, A. Sarti, S. Tubaro
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引用次数: 23

摘要

能够捕获高质量多媒体数据的便携式设备的广泛普及,以及媒体共享平台的迅速扩散,决定了在线用户生成内容的惊人增长。由于很难严格控制这种趋势,因此经常可能发生非法传播受版权保护的材料。这就是盗版音乐的情况,即由歌迷非法录制和重新分发的音乐会。在本文中,我们提出了一种盗版检测器,其目的是消除以下两点之间的歧义:i)非官方记录的盗版;Ii)正式发布的现场音乐会;Iii)正式发行专辑的录音室录音。该方法基于音频特征分析和机器学习技术。我们利用深度学习范式从音频摘录中提取高度表征的特征,并利用监督分类器进行检测。该方法在近500首歌曲的数据集上进行了验证,并将结果与最先进的检测器进行了比较。所进行的实验证实了深度学习技术优于经典特征提取方法的能力。
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Unsupervised feature learning for bootleg detection using deep learning architectures
The widespread diffusion of portable devices capable of capturing high-quality multimedia data, together with the rapid proliferation of media sharing platforms, has determined an incredible growth of user-generated content available online. Since it is hard to strictly regulate this trend, illegal diffusion of copyrighted material is often likely to occur. This is the case of audio bootlegs, i.e., concerts illegally recorded and redistributed by fans. In this paper, we propose a bootleg detector, with the aim of disambiguating between: i) bootlegs unofficially recorded; ii) live concerts officially published; iii) studio recordings from officially released albums. The proposed method is based on audio feature analysis and machine learning techniques. We exploit a deep learning paradigm to extract highly characterizing features from audio excerpts, and a supervised classifier for detection. The method is validated against a dataset of nearly 500 songs, and results are compared to a state-of-the-art detector. The conducted experiments confirm the capability of deep learning techniques to outperform classic feature extraction approaches.
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