CNN-SCNet: A CNN net-based deep learning framework for infant cry detection in household setting

IF 1.8 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Raiyan Jahangir
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Abstract

Infants are vulnerable to several health problems and cannot express their needs clearly. Whenever they are in a state of urgency and require immediate attention, they cry, which is a form of communication for them. Therefore, the parents of the infants always need to be alert and keep continuous supervision of their infants. However, parents cannot monitor their infants all the time. An infant monitoring system could be a possible solution to monitor the infants, determine when the infants are crying, and notify the parents immediately. Although many such systems are available, most cannot detect infant cries. Some systems have infant cry detection mechanisms, but those mechanisms are not very accurate in detecting infant cries because the mechanisms either include obsolete approaches or machine learning (ML) models that cannot identify infant cries from noisy household settings. To address this limitation, in this research, different conventional and hybrid ML models were developed and analyzed in detail to find out the best model for detecting infant cries in a household setting. A stacked classifier is proposed using different state-of-the-art technologies, outperforming all other developed models. The proposed CNN-SCNet's (CNN-Stacked Classifier Network) precision, recall, and f1-score were found to be 98.72%, 98.05%, and 98.39%, respectively. Infant monitoring systems can use this classifier to detect infant cries in noisy household settings.

Abstract Image

CNN-SCNet:基于 CNN 网络的深度学习框架,用于家庭环境中的婴儿哭声检测
婴儿容易受到多种健康问题的影响,无法清楚地表达自己的需求。每当他们处于紧急状态,需要立即得到关注时,他们就会哭闹,这也是他们的一种交流方式。因此,婴儿的父母需要时刻保持警惕,对婴儿进行持续监护。然而,父母不可能一直监控婴儿。婴儿监视系统是一个可行的解决方案,它可以监视婴儿,确定婴儿何时哭泣,并立即通知父母。虽然市面上有很多此类系统,但大多数都无法检测到婴儿的哭声。有些系统具有婴儿哭声检测机制,但这些机制在检测婴儿哭声方面并不十分准确,因为这些机制要么采用了过时的方法,要么采用了机器学习(ML)模型,无法从嘈杂的家庭环境中识别出婴儿的哭声。针对这一局限性,本研究开发并详细分析了不同的传统和混合 ML 模型,以找出检测家庭环境中婴儿哭声的最佳模型。本研究提出了一种采用不同先进技术的堆叠分类器,其性能优于所有其他已开发的模型。所提出的 CNN-SCNet(CNN-堆叠分类器网络)的精确度、召回率和 f1 分数分别为 98.72%、98.05% 和 98.39%。婴儿监测系统可使用该分类器检测嘈杂家庭环境中的婴儿哭声。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.10
自引率
0.00%
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0
审稿时长
19 weeks
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