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Cover detection using dominant melody embeddings

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Academic year: 2021

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Figure 1: Convolutional model (time on the first dimension, frequency on the second dimension).
Figure 4: Scores obtained on evaluation set for a model trained - -with various K/E (left) - with various B (right).
Figure 7: Left: separation of p c (d) (green) and p nc (d) (red).
Table 3: Comparison between method [16] and our proposed method on a large dataset (MR=Mean rank)

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