MusicJam: Visualizing Music Insights via Generated Narrative Illustrations
Visualizing the insights of the invisible music is able to bring listeners an enjoyable and immersive listening experience, and therefore has attracted much attention in the field of information visualization. Over the past decades, various music visualization techniques have been introduced. Howeve...
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Zusammenfassung: | Visualizing the insights of the invisible music is able to bring listeners an
enjoyable and immersive listening experience, and therefore has attracted much
attention in the field of information visualization. Over the past decades,
various music visualization techniques have been introduced. However, most of
them are manually designed by following the visual encoding rules, thus shown
in form of a graphical visual representation whose visual encoding schema is
usually taking effort to understand. Recently, some researchers use figures or
illustrations to represent music moods, lyrics, and musical features, which are
more intuitive and attractive. However, in these techniques, the figures are
usually pre-selected or statically generated, so they cannot precisely convey
insights of different pieces of music. To address this issue, in this paper, we
introduce MusicJam, a music visualization system that is able to generate
narrative illustrations to represent the insight of the input music. The system
leverages a novel generation model designed based on GPT-2 to generate
meaningful lyrics given the input music and then employs the stable diffusion
model to transform the lyrics into coherent illustrations. Finally, the
generated results are synchronized and rendered as an MP4 video accompanied by
the input music. We evaluated the proposed lyric generation model by comparing
it to the baseline models and conducted a user study to estimate the quality of
the generated illustrations and the final music videos. The results showed the
power of our technique. |
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DOI: | 10.48550/arxiv.2308.11329 |