Corpus ID: 19492383

SALAMI Smoke Machines Atom Orr You Done Me Wrong Cindy Woolf Out in the Cold Carole King Black or White Michael Jackson We will Rock You

  title={SALAMI Smoke Machines Atom Orr You Done Me Wrong Cindy Woolf Out in the Cold Carole King Black or White Michael Jackson We will Rock You},
  author={Shlomo Dubnov},
Identifying boundaries in music structural segmentation is a well studied music information retrieval problem. The goal is to develop algorithms that automatically identify segmenting time points in music that closely matches human annotated data. The annotation itself is challenging due to its subjective nature, such as the degree of change that constitutes a boundary, the location of such boundaries, and whether a boundary should be assigned to a single time frame or a range of frames… Expand

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