Improved Lexicon-driven based Chord Symbol Recognition in Musical Images

Cong Minh Dinh, L. Do, Hyung-Jeong Yang, Soohyung Kim, Gueesang Lee
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引用次数: 2

Abstract

Although extensively developed, optical music recognition systems have mostly focused on musical symbols (notes, rests, etc.), while disregarding the chord symbols. The process becomes difficult when the images are distorted or slurred, although this can be resolved using optical character recognition systems. Moreover, the appearance of outliers (lyrics, dynamics, etc.) increases the complexity of the chord recognition. Therefore, we propose a new approach addressing these issues. After binarization, un-distortion, and stave and lyric removal of a musical image, a rule-based method is applied to detect the potential regions of chord symbols. Next, a lexicon-driven approach is used to optimally and simultaneously separate and recognize characters. The score that is returned from the recognition process is used to detect the outliers. The effectiveness of our system is demonstrated through impressive accuracy of experimental results on two datasets having a variety of resolutions.
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改进的基于词典驱动的和弦符号识别在音乐图像
光学音乐识别系统虽然得到了广泛的发展,但主要集中在音乐符号(音符、休止符等)上,而忽略了和弦符号。当图像失真或模糊时,这个过程变得困难,尽管这可以使用光学字符识别系统来解决。此外,异常值(歌词、动态等)的出现增加了和弦识别的复杂性。因此,我们提出了解决这些问题的新方法。在对音乐图像进行二值化、去失真、去五线谱和抒情后,采用一种基于规则的方法检测和弦符号的潜在区域。其次,使用词典驱动的方法优化并同时分离和识别字符。从识别过程返回的分数用于检测异常值。我们的系统的有效性通过在具有各种分辨率的两个数据集上的实验结果的令人印象深刻的准确性来证明。
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