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首页> 外文期刊>Applied Acoustics >Multileveled ternary pattern and iterative ReliefF based bird sound classification
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Multileveled ternary pattern and iterative ReliefF based bird sound classification

机译:多层次的三元模式和迭代释放的鸟类分类

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摘要

Birds may need to be identified for purposes such as environmental monitoring, follow-up, and species detection in the ecological area. Automatic sound classifiers have been used to perform species detection. Many methods have been presented in the literature to classify bird sounds with high accuracy. Nowadays, deep learning models have been used to classify data with high classification accuracy. However, these networks have high computational complexity. To obtain a highly accurate and lightweight classification model, a new multileveled and handcrafted features based machine learning model is presented. The presented automated bird sound classification model uses the multileveled ternary pattern (TP) feature generation, feature selection, and classification phases. The multileveled feature generation network can reach high classification accuracies since they generate high-level, low-level, and mid-level features. To construct levels, discrete wavelet transform (DWT) is employed to use the effectiveness of the DWT in bird sound classification. An improved version of the ReliefF, which is iterative ReliefF (IRF), is considered as feature selector. IRF selects the most informative features automatically, and these features are operated on linear discriminant (LD), k nearest neighbor (kNN), bagged tree (BT), and support vector machine (SVM) classifiers to calculate results of variable classifiers. The proposed multilevel TP and IRF based bird sound classification method reached 96.67% accuracy by using SVM on the 18 classes bird sound dataset. (C) 2020 Elsevier Ltd. All rights reserved.
机译:可能需要鉴定鸟类的目的,例如环境监测,随访和生态区域的物种检测。自动声学分类器已被用于执行物种检测。在文献中呈现了许多方法,以掌握高精度的鸟类声音。如今,深度学习模型已被用于对具有高分类准确度的数据进行分类。但是,这些网络具有高计算复杂性。为了获得高度准确和轻量级的分类模型,提出了一种新的多级和手工制作功能的机器学习模型。所提出的自动鸟类分类模型使用多层次的三元模式(TP)特征生成,特征选择和分类阶段。多级特征生成网络可以达到高分类准确性,因为它们产生高级,低级和中级功能。为了构建水平,采用离散小波变换(DWT)来利用DWT在鸟类声音分类中的有效性。作为迭代Relieff(IRF)的Relieff的改进版本被认为是特征选择器。 IRF自动选择最具信息丰富的功能,这些功能在线性判别(LD),K最近邻(KNN),袋装树(BT)和支持向量机(SVM)分类器上运行,以计算可变分类器的结果。通过在18级鸟类声音数据集上使用SVM,所提出的多级TP和基于IRF的鸟类声音分类方法达到了96.67%的精度。 (c)2020 elestvier有限公司保留所有权利。

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