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Jukepix: A Cross-Modality Approach to Transform Paintings into Music Segments

机译:Jukepix:一种将绘画转换成音乐片段的跨模态方法

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The challenges in transforming paintings into music is well-known, since the relationship between two kinds of art is unclear. Different composers write different music when the same painting is presented to them. In this paper, a cross-mordality model has been proposed for transforming images into multitrack music based on the framework of deep convolutional generative adversarial networks (DCGANs). The proposed model is trained on a classical music dataset and a dataset of impressionist paintings. The model can be applied to transfer impressionist paintings into classical music with two tracks. By using music evaluation methods, the harmonicity of the generated music can be confirmed. Our model is the first attempt of our knowledge at transforming paintings into music segments.
机译:将绘画转换成音乐的挑战是众所周知的,因为两种艺术之间的关系尚不清楚。当向他们展示同一幅画时,不同的作曲家会写不同的音乐。本文提出了一种跨道德模型,用于在深度卷积生成对抗网络(DCGAN)的框架下将图像转换为多轨音乐。在古典音乐数据集和印象派绘画数据集上训练提出的模型。该模型可用于将印象派绘画转变为具有两条轨道的古典音乐。通过使用音乐评估方法,可以确认所生成音乐的和声。我们的模型是我们所学的将绘画转变为音乐片段的首次尝试。

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