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Predictive Real-Time Beat Tracking from Music for Embedded Application

机译:针对嵌入式应用的音乐中的预测性实时节拍跟踪

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Beat tracking from music signals has significant importance in multimedia information retrieval systems, especially in cover song detection. A predictive real-time beat tracking system can also be used to assist musicians performing live. In this paper we present a real-time beat tracking algorithm, fast enough to be implemented on an embedded system. The onset of a note is detected using a maximum filter approach that suppresses the effect of vibrato. Beats are predicted a second in advance using a causal variant of Dynamic Programming. We have employed an onset memoization algorithm, to reduce the computational resources required. Raspberry Pi was chosen as our preferred development board. We have demonstrated through experimental results that the proposed approach can satisfactorily estimate beat positions from a music signal in real-time with an average continuity score (AMLt) of 0.67.
机译:从音乐信号中进行节拍跟踪在多媒体信息检索系统中,特别是在翻唱歌曲检测中,具有重要意义。预测性实时节拍跟踪系统也可以用于协助音乐家进行现场表演。在本文中,我们提出了一种实时心跳跟踪算法,该算法足够快,可以在嵌入式系统上实现。使用最大滤波器方法来检测音符的开始,该方法可以抑制颤音的影响。使用动态编程的因果变体可以提前一秒钟预测节拍。我们采用了一种起始记忆算法,以减少所需的计算资源。 Raspberry Pi被选为我们首选的开发板。通过实验结果,我们证明了所提出的方法可以实时令人满意地估计音乐信号的节拍位置,平均连续性得分(AMLt)为0.67。

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