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arxiv: 2301.10015 · v1 · pith:7ROWFDMT · submitted 2023-01-23 · cs.SD · cs.AI· eess.AS

Deep Attention-Based Alignment Network for Melody Generation from Incomplete Lyrics

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classification cs.SD cs.AIeess.AS
keywords lyricsincompletemelodydeepgivenalignmentattention-basedgeneration
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We propose a deep attention-based alignment network, which aims to automatically predict lyrics and melody with given incomplete lyrics as input in a way similar to the music creation of humans. Most importantly, a deep neural lyrics-to-melody net is trained in an encoder-decoder way to predict possible pairs of lyrics-melody when given incomplete lyrics (few keywords). The attention mechanism is exploited to align the predicted lyrics with the melody during the lyrics-to-melody generation. The qualitative and quantitative evaluation metrics reveal that the proposed method is indeed capable of generating proper lyrics and corresponding melody for composing new songs given a piece of incomplete seed lyrics.

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