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Offline music symbol recognition using Daisy feature and quantum Grey wolf optimization based feature selection

机译:基于菊花特征和量子灰狼优化的特征选择,离线音乐符号识别

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摘要

Handwritten music symbol recognition is considered by the research fraternity as a critical research problem. It becomes more critical when the symbols are collected from handwritten music sheets in offline mode. Most of the research findings, available in the literature, have tried to recognize the said symbols using various shape based features. But this approach limits system performance when we dealt with lookalike symbols such as half note, eight note and quarter note. To encounter this, in the present work we have used a texture based feature descriptor, called Daisy, for the said purpose. Though Daisy descriptor yields reasonably good recognition accuracy, but it generates a high dimensional feature vector. Hence, in this work, Quantum concept inspired Grey Wolf Optimization, named as QGWO, has been applied to select optimal feature subset from this high dimensional feature vector. We have applied the proposed method on six different standard music symbol datasets that include HOMUS, Capitan_score_uniform, Capitan_score_non-uniform, Fornes, Rebelo_real and Rebelo_synthetic datasets. On these datasets we have achieved recognition accuracies 93.07%, 99.22%, 99.20%, 99.49% and 100.00% respectively with 39.63%, 49.75%, 42.50%, 67.62%, 54.37% and 71.25% of actual feature dimension (i.e., 800) respectively. Additionally, we have compared our results with some state-of-the-art methods along with two recent deep learning based models, and it has been found that the present approach outperforms those.
机译:研究兄弟会被认为是一个关键研究问题的手写音乐符号识别。当符号在离线模式下从手写音乐表收集时变得更加重要。在文献中提供的大多数研究结果都试图使用基于形状的特征来识别所述符号。但是,当我们处理诸如半音符,八个注释和四分之一的符号之类时,这种方法限制了系统性能。要遇到这一点,在目前的工作中,我们使用了基于纹理的特征描述符,称为菊花,用于上述目的。虽然菊花描述符产生合理的识别准确性,但它产生了高维特征向量。因此,在这项工作中,Quantum Concept启发了灰狼优化,被命名为QGWO,已经应用于从该高维特征向量中选择最佳特征子集。我们已在六个不同的标准音乐符号数据集上应用了包含Homus,Capitan_Score_Uniform,Capitan_score_non-Somestion,Fornes,Rebelo_real和Rebelo_synthetic DataSets的六个不同标准音乐符号数据集。在这些数据集上,我们已经实现了93.07%,99.22%,99.20%,99.49%和100.00%的识别精度,39.63%,49.75%,42.50%,67.62%,54.37%和71.25%的实际特征尺寸(即800)分别。此外,我们将结果与一些最先进的方法相比,以及最近的两个基于深度学习的模型,并且已经发现本方法优于那些。

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