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Visual music score detection with unsupervised feature learning method based on K-means

机译:基于K-means的无监督特征学习方法的视觉音乐乐谱检测

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摘要

Automatic music score detection plays important role in the optical music recognition (OMR). In a visual image, the characteristic of the music scores is frequently degraded by illumination, distortion and other background elements. In this paper, to reduce the influences to OMR caused by those degradations especially the interference of Chinese character, an unsupervised feature learning detection method is proposed for improving the correctness of music score detection. Firstly, a detection framework was constructed. Then sub-image block features were extracted by simple unsupervised feature learning (UFL) method based on K-means and classified by SVM. Finally, music score detection processing was completed by connecting component searching algorithm based on the sub-image block label. Taking Chinese text as the main interferences, the detection rate was compared between UFL method and texture feature method based on 2D Gabor filter in the same framework. The experiment results show that unsupervised feature learning method gets less error detection rate than Gabor texture feature method with limited training set.
机译:自动乐谱检测在光学音乐识别(OMR)中起着重要作用。在视觉图像中,乐谱的特征经常因照明,失真和其他背景元素而降低。为了减少音质下降对汉字识别的影响,特别是汉字的干扰,提出了一种无监督特征学习检测方法,以提高乐谱检测的正确性。首先,构建了一个检测框架。然后,通过基于K-means的简单无监督特征学习(UFL)方法提取子图像块特征,并通过SVM分类。最后,通过连接基于子图像块标签的成分搜索算法来完成乐谱检测处理。在同一框架下,以中文为主要干扰,比较了基于2D Gabor滤波器的UFL方法和纹理特征方法的检测率。实验结果表明,与有限训练集的Gabor纹理特征方法相比,无监督特征学习方法的错误检测率更低。

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