首页> 外文期刊>EURASIP journal on advances in signal processing >Robust and Adaptive OMR System Including Fuzzy Modeling, Fusion of Musical Rules, and Possible Error Detection
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Robust and Adaptive OMR System Including Fuzzy Modeling, Fusion of Musical Rules, and Possible Error Detection

机译:鲁棒且自适应的OMR系统,包括模糊建模,音乐规则融合和可能的错误检测

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This paper describes a system for optical music recognition (OMR) in case of monophonic typeset scores. After clarifying the difficulties specific to this domain, we propose appropriate solutions at both image analysis level and high-level interpretation. Thus, a recognition and segmentation method is designed, that allows dealing with common printing defects and numerous symbol interconnections. Then, musical rules are modeled and integrated, in order to make a consistent decision. This high-level interpretation step relies on the fuzzy sets and possibility framework, since it allows dealing with symbol variability, flexibility, and imprecision of music rules, and merging all these heterogeneous pieces of information. Other innovative features are the indication of potential errors and the possibility of applying learning procedures, in order to gain in robustness. Experiments conducted on a large data base show that the proposed method constitutes an interesting contribution to OMR.
机译:本文介绍了一种用于单音排版分数的光学音乐识别(OMR)系统。在明确了该领域的特定困难之后,我们在图像分析级别和高级解释方面都提出了适当的解决方案。因此,设计了一种识别和分割方法,该方法可以处理常见的打印缺陷和大量的符号互连。然后,对音乐规则进行建模和整合,以便做出一致的决定。此高级解释步骤依赖于模糊集和可能性框架,因为它可以处理符号可变性,灵活性和音乐规则的不精确性,并合并所有这些异构信息。其他创新功能还包括潜在错误的指示以及应用学习程序以增强鲁棒性的可能性。在大型数据库上进行的实验表明,该方法对OMR构成了有趣的贡献。

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