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Using a Solution Construction Algorithm for Cyclic Shift Network Coding under Multicast Network to the Transformation of Musical Performance Styles

机译:多播网络下循环移位网络编码解决方案施工算法对音乐性能样式的变换

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This paper presents a theoretical framework of the circular shift network coding system through the study of nonmultiple clustered interval music performance style conversion and the analysis of music conversion by using circular shift topology, and a series of basic research results of circular shift network coding is obtained under this framework. It reveals the essential connection between scalar network coding based on finite domain and cyclic shift network coding, designs a solution construction algorithm for cyclic shift network coding under multicast network, and portrays the multicast capacity of cyclic shift network coding. It overcomes the problem that the piano roll-curtain representation cannot distinguish between a single long note and multiple consecutive notes of the same pitch, describes musical information more comprehensively, extracts musical implicit style from the note matrix based on autoencoder, and better eliminates the potential influence of musical content on musical performance style. A two-way recurrent neural network based on the gated recurrent unit is used to extract a sequence of note feature vectors of different styles, and a one-dimensional convolutional neural network is used to predict the intensity of the extracted note feature vector sequence for a specific style, which better learns the intensity variation of different styles of MIDI music.
机译:本文通过研究非聚集间隔音乐性能样式转换和使用圆形移位拓扑的研究介绍了循环移位网络编码系统的理论框架,并获得了一系列圆形移位网络编码的基本研究结果在这个框架下。它揭示了基于有限域和循环移位网络编码的标量网络编码之间的基本连接,设计了多播网络下的循环移位网络编码的解决方案结构算法,并描绘了循环移位网络编码的组播容量。它克服了钢琴卷帘表示无法区分单个长记和同一音调的多个连续音符的问题,更全面地描述了音乐信息,从基于autoencoder提取音乐矩阵的音乐隐式样式,更好地消除了潜力音乐素对音乐绩效风格的影响。基于门控复发单元的双向复发性神经网络用于提取不同风格的一系列音符特征向量,并且使用一维卷积神经网络来预测提取的音符特征向量序列的强度具体风格更好地了解不同风格的MIDI音乐的强度变化。

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