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Clustering On-Line Dynamically Constructed Handwritten Music Notation with the Self-organising Feature Map

机译:聚类在线与自组织特征映射动态构建手写音乐符号

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In this paper we consider the problem of recognising handwritten music notation in the context of a pen-based interface. The motivation for the paper stems from current pen-based input technologies that do not achieve true recognition of unconstrained handwritten music. The practical applications of music notation recognition in education, composing, music search tasks and other are obvious, warranting investigation of the problem. This paper explores the self-organising feature map (SOM) as a coarse classifier to categorise pendown movements used by people when writing music notation, so creating a set of person specific 'primitives' based on pen strokes. Three different preprocessing methods are used to scale pendown movements and a 5 by 5 SOM is used to cluster the strokes. The stroke clusters form the basis of categories with which a multi-layer perceptron (MLP) could be trained for stroke recognition of pen-movements that comprise handwritten music notation
机译:在本文中,我们考虑在基于笔的界面的上下文中识别手写音乐表示法的问题。纸张的动机源于当前的基于笔的输入技术,这些输入技术不会真正识别不受约束的手写音乐。音乐符号识别在教育,撰写,音乐搜索任务等中的实际应用是明显的,保证对问题的调查。本文探讨了自组织特征映射(SOM)作为粗级分类器,以便在编写音乐符号时对人们使用的Pendown移动进行分类,因此基于PEN笔触创建一组特定的“基元”。三种不同的预处理方法用于缩放Pendown运动,使用5乘5个SOM用于聚类笔触。行程集群构成了可以培训多层Perceptron(MLP)的类别的基础,用于笔划识别的笔运动,包括手写音乐符号

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