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HMM-based writer identification in music score documents without staff-line removal

机译:乐谱文件中基于HMM的作者识别,无需删除人员

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Writer identification from musical score documents is a challenging task due to its inherent problem of overlapping of musical symbols with staff-lines. Most of the existing works in the literature of writer identification in musical score documents were performed after a pre-processing stage of staff-lines removal. In this paper we propose a novel writer identification framework in musical score documents without removing staff-lines from the documents. In our approach, Hidden Markov Model (HMM) has been used to model the writing style of the writers without removing staff-lines. The sliding window features are extracted from musical score-lines and they are used to build writer specific HMM models. Given a query musical sheet, writer specific confidence for each musical line is returned by each writer specific model using a log -likelihood score. Next, a log-like lihood score in page level is computed by weighted combination of these scores from the corresponding line images of the page. A novel Factor Analysis-based feature selection technique is applied in sliding window features to reduce the noise appearing from staff-lines which proves efficiency in writer identification performance. In our framework we have also proposed a novel score-line detection approach in musical sheet using HMM. The experiment ha's been performed in CVC-MUSCIMA data set and the results obtained show that the proposed approach is efficient for score-line detection and writer identification without removing staff-lines. To get the idea of computation time of our method, detail analysis of execution time is also provided. (C) 2017 Elsevier Ltd. All rights reserved.
机译:从乐谱文件中识别作者是一项具有挑战性的任务,因为它固有的音乐符号与谱线重叠的问题。在乐谱文件中作者识别的文献中,大多数现有的作品都是在删除人员线的预处理阶段之后进行的。在本文中,我们提出了一种在乐谱文件中新颖的作者识别框架,而无需从文件中删除人员界限。在我们的方法中,使用隐马尔可夫模型(HMM)来建模作家的写作风格,而不用去除人员界限。滑动窗口特征是从乐谱线中提取的,用于构建特定于作者的HMM模型。给定查询乐谱,由每个作家特定模型使用对数似然分数返回针对每个音乐线的作家特定置信度。接下来,通过从页面的相应行图像中对这些得分进行加权组合来计算页面级别的对数似然得分。一种新颖的基于因子分析的特征选择技术被应用到滑动窗口特征中,以减少人员线出现的噪声,这证明了作者识别性能的效率。在我们的框架中,我们还提出了一种使用HMM的音乐谱中新颖的乐谱线检测方法。已经在CVC-MUSCIMA数据集中进行了实验,获得的结果表明,所提出的方法可有效地进行分数线检测和作者识别,而无需删除人员线。为了了解我们方法的计算时间,还提供了执行时间的详细分析。 (C)2017 Elsevier Ltd.保留所有权利。

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