首页> 外文会议>Artificial Intelligence, MICAI, 2008 Seventh Mexican International Conference on >Evolutionary-Neural System to Classify Infant Cry Units for Pathologies Identification in Recently Born Babies
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Evolutionary-Neural System to Classify Infant Cry Units for Pathologies Identification in Recently Born Babies

机译:进化神经系统分类婴儿哭泣单位的病理鉴定在最近出生的婴儿

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This work presents an infant cry automatic recognizer development, with the objective of classifying two kinds of infant cries, normal and pathological, from recently born babies. Extraction of acoustic features is used such as MFCC (Mel Frequency Cepstral Coefficients), obtained from Infant Cry Units sound waves, and a genetic feature selection system combined with a feed forward input delay neural network, trained by adaptive learning rate back-propagation. For the experiments, recordings from Cuban and Mexican babies are used, classifying normal and pathological cry in three different experiments; Cuban babies, Mexican Babies, and Cuban on6; Mexican babies. It is also shown a comparison between a simple traditional feed-forward neural network and another complemented with the proposed genetic feature selection system, to reduce the feature input vectors. In this paper the whole process is described; in which the acoustic features extraction is included, the hybrid system design, implementation, training and testing. The results from some experiments are also shown, in which the infant cry recognition rate obtained is of up to 100% using our genetic system.
机译:这项工作介绍了婴儿哭声自动识别器的发展,其目的是对刚出生的婴儿的两种哭声进行分类,正常哭声和病理哭声。声学特征的提取被使用,例如从婴儿哭泣声波获得的MFCC(梅尔频率倒谱系数),以及遗传特征选择系统与前馈输入延迟神经网络相结合,通过自适应学习率反向传播进行训练。对于实验,使用了来自古巴和墨西哥婴儿的录音,在三个不同的实验中对正常和病理性哭声进行了分类。古巴婴儿,墨西哥婴儿和古巴on6;墨西哥婴儿。还显示了一个简单的传统前馈神经网络与另一个使用拟议的遗传特征选择系统进行补充的网络之间的比较,以减少特征输入向量。本文描述了整个过程。其中包括声学特征提取,混合系统的设计,实施,培训和测试。还显示了一些实验的结果,其中使用我们的遗传系统获得的婴儿啼哭识别率高达100%。

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