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Staff-Line Detection on Grayscale Images with Pixel Classification

机译:具有像素分类的灰度图像上的谱线检测

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Staff-line detection and removal are important processing steps in most Optical Music Recognition systems. Traditional methods make use of heuristic strategies based on image processing techniques with binary images. However, binarization is a complex process for which it is difficult to achieve perfect results. In this paper we describe a novel staff-line detection and removal method that deals with grayscale images directly. Our approach uses supervised learning to classify each pixel of the image as symbol, staff, or background. This classification is achieved by means of Convolutional Neural Networks. The features of each pixel consist of a square window from the input image centered at the pixel to be classified. As a case of study, we performed experiments with the CVC-Muscima dataset. Our approach showed promising performance, outperforming state-of-the-art algorithms for staff-line removal.
机译:在大多数光学音乐识别系统中,人员线的检测和删除是重要的处理步骤。传统方法利用基于具有二进制图像的图像处理技术的启发式策略。但是,二值化是一个复杂的过程,很难获得理想的结果。在本文中,我们描述了一种直接处理灰度图像的新颖的人员线检测和去除方法。我们的方法使用监督学习将图像的每个像素分类为符号,标尺或背景。这种分类是通过卷积神经网络实现的。每个像素的特征都包括一个以输入图像为中心的方形窗口,该窗口以要分类的像素为中心。作为研究案例,我们使用CVC-Muscima数据集进行了实验。我们的方法显示出令人鼓舞的性能,性能优于用于删除人员的最新算法。

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