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Summarizing popular music via structural similarity analysis

机译:通过结构相似性分析总结流行音乐

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We present a framework for summarizing digital media based on structural analysis. Though these methods are applicable to general media, we concentrate here on characterizing the repetitive structure in popular music. In the first step, a similarity matrix is calculated from interframe spectral similarity. Segment boundaries, such as verse-chorus transitions, are found by correlating a kernel along the diagonal of the matrix. Once segmented, spectral statistics of each segment are computed. In the second step, segments are clustered, based on the pairwise similarity of their statistics, using a matrix decomposition. Finally, the audio is summarized by combining segments representing the clusters most frequently repeated throughout the piece. We present results on a small corpus showing more than 90% correct detection of verse and chorus segments.
机译:我们提出了一种基于结构分析的数字媒体概述的框架。虽然这些方法适用于普通媒体,但我们专注于对流行音乐中的重复结构进行了专注于。在第一步中,根据帧间光谱相似性计算相似性矩阵。通过沿矩阵的对角线与核心相关联,找到段边界,例如verse-chorus转换。一旦分段,计算每个段的光谱统计。在第二步中,使用矩阵分解基于其统计数据的成对相似性群集群体。最后,通过组合代表整个件中最常重复的群集的段来概述音频。我们在小型语料库上显示结果,显示超过90%的韵律检测和合唱片段。

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