首页> 外文会议>Asian conference on computer vision >Automatic Stave Discovery for Musical Facsimiles
【24h】

Automatic Stave Discovery for Musical Facsimiles

机译:用于音乐传真的自动梯级发现

获取原文

摘要

Lately, there is an increased interest in the analysis of music score facsimiles, aiming at automatic digitization and recognition. Noise, corruption, variations in handwriting, non-standard page layouts and notations are common problems affecting especially the centuries-old manuscripts. Starting from a facsimile, the current state-of-the-art methods bina-rize the image, detect and group the staff lines, then remove the staff lines and classify the remaining symbols imposing rules and prior knowledge to obtain the final digital representation. The first steps are critical for the performance of the overall system. Here we propose to handle binarization, staff detection and noise removal by means of dynamic programming (DP) formulations. Our main insights are: a) the staves (the 5-groups of staff lines) are represented by repetitive line patterns, are more constrained and informative, and thus we propose direct optimization over such patterns instead of first spotting single staff lines, b) the optimal binarization threshold also is the one giving the maximum evidence for the presence of staves, c) the noise, or background, is given by the regions where there is insufficient stave pattern evidence. We validate our techniques on the CVC-MUSCIMA(2011) staff removal benchmark, achieving the best error rates (1.7%), as well as on various, other handwritten score facsimiles from the Renaissance.
机译:最近,对音乐分数的分析有所增加,旨在自动数字化和识别。噪声,腐败,手写的变化,非标准页面布局和符号是影响尤其是历史悠久的稿件的常见问题。从传真机开始,目前的最先进的方法Bina-Rize图像,检测和组员工线,然后删除员工线条并分类剩余符号强加规则和先验知识以获得最终的数字表示。第一步对于整个系统的性能至关重要。在这里,我们建议通过动态编程(DP)制剂来处理二值化,员工检测和噪声去除。我们的主要见解是:a)Staves(5组员工线)由重复线模式代表,更受约束和信息,因此我们提出了直接优化这些模式而不是首先发现单一员工线B)最佳二值化阈值也是给予塔顶,c)噪声或背景的最大证据的最大证据由斯塔及不足的地区给出的区域给出。我们在CVC-Muscima(2011)人员删除基准上验证了我们的技术,实现了最佳的错误率(1.7%),以及文艺复兴时期的各种手写分数传真。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号