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Content-Based Audio Classification and Retrieval Using Segmentation, Feature Extraction and Neural Network Approach

机译:基于内容的音频分类和使用分段,特征提取和神经网络方法检索

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摘要

The volume of audio data is increasing tremendously daily on public networks like Internet. This increases the difficulty in accessing those audio data. Hence, there is a need of efficient indexing and annotation mechanisms. Non-stationarity and discontinuity present in the audio signal rise the difficulty in segmentation and classification of audio signals. The other challenging task is to extract and select the optimal features in audio signal. The application areas of audio classification and retrieval system include speaker recognition, gender classification, music genre classification, environment sound classification, etc. This paper proposes a machine learning- and neural network-based approach which performs audio pre-processing, segmentation, feature extraction, classification and retrieval of audio signal from the dataset. We have proposed novel approach of classification and retrieval using FPNN by combining fuzzy logic and PNN characteristics. We found that FPNN classifier gives better accuracy, F1-score and Kappa coefficient values compared to SVM, k-NN and PNN classifiers.
机译:在互联网这样的公共网络上每天都会增加音频数据的体积。这增加了访问这些音频数据的困难。因此,需要有效的索引和注释机制。音频信号中存在的非实用性和不连续性上升了音频信号的分割和分类中的难度。其他具有挑战性的任务是提取和选择音频信号中的最佳功能。音频分类和检索系统的应用领域包括扬声器识别,性别分类,音乐类型分类,环境声音分类等。本文提出了一种机器学习和基于神经网络的方法,该方法执行音频预处理,分段,特征提取,数据集中音频信号的分类和检索。通过组合模糊逻辑和PNN特性,我们使用FPNN提出了新的分类和检索方法。与SVM,K-NN和PNN分类器相比,我们发现FPNN分类器提供了更好的精度,F1分数和KAPPA系数值。

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