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Music Document Layout Analysis through Machine Learning and Human Feedback

机译:通过机器学习和人类反馈进行音乐文档布局分析

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Music documents often include musical symbols as well as other relevant elements such as staff lines, text, and decorations. To detect and separate these constituent elements, we propose a layout analysis framework based on machine learning that focuses on pixel-level classification of the image. For that, we make use of supervised learning classifiers trained to infer the category of each pixel. In addition, our scenario considers a human-aided computing approach in which the user is part of the recognition loop, providing feedback where relevant errors are made.
机译:音乐文档通常包含音乐符号以及其他相关元素,例如谱线,文本和装饰。为了检测和分离这些组成元素,我们提出了一种基于机器学习的布局分析框架,该框架着重于图像的像素级分类。为此,我们利用训练有素的监督学习分类器来推断每个像素的类别。此外,我们的方案考虑了一种人工计算方法,其中用户是识别循环的一部分,在出现相关错误时提供反馈。

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