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Image Operator Learning Coupled with CNN Classification and Its Application to Staff Line Removal

机译:图像操作员学习与CNN分类及其应用于员工线路的应用

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Many image transformations can be modeled by image operators that are characterized by pixel-wise local functions defined on a finite support window. In image operator learning, these functions are estimated from training data using machine learning techniques. Input size is usually a critical issue when using learning algorithms, and it limits the size of practicable windows. We propose the use of convolutional neural networks (CNNs) to overcome this limitation. The problem of removing staff-lines in music score images is chosen to evaluate the effects of window and convolutional mask sizes on the learned image operator performance. Results show that the CNN based solution outperforms previous ones obtained using conventional learning algorithms or heuristic algorithms, indicating the potential of CNNs as base classifiers in image operator learning. The implementations will be made available on the TRIOSlib project site.
机译:许多图像转换可以由图像运算符建模,其特征在于在有限支持窗口上定义的像素 - 方向本地功能。在图像运营商学习中,这些功能估计使用机器学习技术训练数据。输入大小通常是使用学习算法时的关键问题,并且它限制了可行的窗口的大小。我们建议使用卷积神经网络(CNNS)来克服这种限制。选择删除音乐分数图像中的员工行的问题,以评估窗口和卷积掩模大小对学习图像操作员性能的影响。结果表明,基于CNN的解决方案优于使用传统学习算法或启发式算法获得的先前,表示CNNS作为图像运营商学习中的基本分类器的潜力。将在TrioSlib项目站点上提供实现。

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