新生儿啼哭分析与分类

N. Nimbarte, Huzaif Khan, Mangesh Dilip Sendre, Kiran Ramteke, Sonali Wairagade
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引用次数: 1

摘要

本研究提出了一种基于Mel频率倒谱系数(MFCC)和k -最近邻(KNN)算法的婴儿哭声检测系统。对各种文献的回顾主要集中在数据收集、跨域信号处理和使用机器学习算法的分类上。当使用各种应用程序来监测婴儿的状况时,对婴儿哭声的自动语音检测是至关重要的。这个假设的概念涉及到检测婴儿的尖叫。为了在一系列具有挑战性的环境中区分婴儿的哭声,该系统使用了机器学习技术。该方法从婴儿哭声的音频信号中提取MFCC特征,并根据哭声的特征应用KNN进行分类。结果是基于使用KNN的哭泣检测性能的分类相关调查。在一些情况下,包括不同的环境噪音,婴儿的哭声可能会被自动检测到。当使用可自由访问的数据集进行测试时,所建议的技术在识别哭泣类型方面显示出很高的准确性。
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New Born Baby Cry Analysis and Classification
This study proposes a baby cry detection system using Mel Frequency Cepstral Coefficients (MFCC) and K-Nearest Neighbor (KNN) algorithm. The review of a wide variety of literature focuses primarily on data gathering, processing of signals in cross domain, and classification using machine learning algorithms. When using various apps to monitor a baby’s condition, automatic voice detection of a baby’s cry is crucial. This hypothesized concept involves the detection of a baby’s scream. To distinguish infant sounds of crying in a range of settings which are residential under challenging circumstances, this system uses a machine learning technique. The proposed method extracts MFCC features from the audio signals of the baby cries and applies KNN to classify the cries based on their features. The results are based on a classification-related investigation of the performance of cry-detection using KNN. A baby’s cry may be automatically detected in a few circumstances including different environmental noises. The suggested technique demonstrated high accuracy in identifying cry types when tested using a freely accessible dataset.
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