Content-based Recommendations for Radio Stations with Deep Learned Audio Fingerprints

Stefan Langer, Liza Obermeier, André Ebert, Markus Friedrich, Emma Munisamy, Claudia Linnhoff-Popien
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Abstract

The world of linear radio broadcasting is characterized by a wide variety of stations and played content. That is why finding stations playing the preferred content is a tough task for a potential listener, especially due to the overwhelming number of offered choices. Here, recommender systems usually step in but existing content-based approaches rely on metadata and thus are constrained by the available data quality. Other approaches leverage user behavior data and thus do not exploit any domain-specific knowledge and are furthermore disadvantageous regarding privacy concerns. Therefore, we propose a new pipeline for the generation of audio-based radio station fingerprints relying on audio stream crawling and a Deep Autoencoder. We show that the proposed fingerprints are especially useful for characterizing radio stations by their audio content and thus are an excellent representation for meaningful and reliable radio station recommendations. Furthermore, the proposed modules are part of the HRADIO Communication Platform, which enables hybrid radio features to radio stations. It is released with a flexible open source license and enables especially small- and medium-sized businesses, to provide customized and high quality radio services to potential listeners.
基于内容的深度学习音频指纹广播电台推荐
线性无线电广播的世界的特点是各种各样的电台和播放的内容。这就是为什么对于一个潜在的听众来说,找到播放自己喜欢的内容的电台是一项艰巨的任务,尤其是在可供选择的节目太多的情况下。在这里,推荐系统通常会介入,但现有的基于内容的方法依赖于元数据,因此受到可用数据质量的限制。其他方法利用用户行为数据,因此不利用任何特定于领域的知识,并且在隐私问题上更不利。因此,我们提出了一种基于音频流爬行和深度自动编码器的基于音频的无线电台指纹生成新管道。我们表明,所提出的指纹对于通过音频内容来表征广播电台特别有用,因此是有意义和可靠的广播电台推荐的绝佳代表。此外,所提出的模块是HRADIO通信平台的一部分,该平台为无线电台提供混合无线电功能。它以灵活的开源许可证发布,使中小型企业能够为潜在听众提供定制的高质量广播服务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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