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Towards a Universal Music Symbol Classifier

机译:迈向通用音乐符号分类器

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Optical Music Recognition (OMR) aims to recognize and understand written music scores. With the help of Deep Learning, researchers were able to significantly improve the stateof- the-art in this research area. However, Deep Learning requires a substantial amount of annotated data for supervised training. Various datasets have been collected in the past, but without a common standard that defines data formats and terminology, combining them is a challenging task. In this paper we present our approach towards unifying multiple datasets into the largest currently available body of over 90000 musical symbols that belong to 79 classes, containing both handwritten and printed music symbols. A universal music symbol classifier, trained on such a dataset using Deep Learning, can achieve an accuracy that exceeds 98%.
机译:光学音乐识别(OMR)旨在识别和理解书面音乐乐谱。在深度学习的帮助下,研究人员能够显着改善该研究领域的最新水平。但是,深度学习需要大量带注释的数据来进行有监督的培训。过去已经收集了各种数据集,但是没有定义数据格式和术语的通用标准,将它们组合起来是一项艰巨的任务。在本文中,我们介绍了将多个数据集统一为目前最大可用主体的方法,该主体包含90个属于79类的音乐符号,其中包含手写和印刷的音乐符号。使用深度学习在这样的数据集上进行训练的通用音乐符号分类器可以达到超过98%的准确性。

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