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Analysis of an Infant Cry Recognizer for the Early Identification of Pathologies

机译:婴儿哭识别器的早期识别病理学分析

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This work presents the development and analysis of an automatic recognizer of infant cry, with the objective of classifying three classes, normal, hypo acoustics and asphyxia. We use acoustic feature extraction techniques like MFCC, for the acoustic processing of the cry's sound wave, and a Feed Forward Input Delay neural network with training based on Gradient Descent with Adaptive Back-Propagation for classification. We also use principal component analysis (PCA) in order to reduce vector's size and to improve training time. The complete infant cry database is represented by plain text vector files, which allows the files to be easily processed in any programming environment. The paper describes the design, implementation as well as experimentation processes, and the analysis of results of each type of experiment performed.
机译:这项工作介绍了对婴儿哭泣的自动识别器的开发和分析,目的是分类三个类,正常,Hypo声学和窒息。我们使用像MFCC这样的声学特征提取技术,用于哭声的声波的声学处理,以及基于梯度下降的训练具有训练的前馈输入延迟神经网络,其自适应反向传播进行分类。我们还使用主成分分析(PCA)以减少向量的尺寸并改善培训时间。完整的婴儿Cry数据库由纯文本传染媒介文件表示,允许在任何编程环境中轻松处理文件。本文介绍了设计,实现以及实验过程,以及对每种类型的实验结果进行分析。

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