基于Jaya蜜獾优化的基于呼吸声音信号检测新冠肺炎的深度神经模糊网络结构

J. Dar, K. Srivastava, Sajaad Ahmad Lone
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引用次数: 0

摘要

目的新型冠状病毒肺炎疫情预测过程是应对新型冠状病毒肺炎疫情传播和死亡率的重要手段。然而,由于输入图像的大小和分辨率不同,早期和精确预测Covid-19更加困难。因此,传统新冠病毒检测方法面临的这些挑战和问题被认为是开发基于jhbo的DNFN的主要动力。本研究的主要贡献是使用设计的基于jhbo的DNFN设计了一个有效的Covid-19检测模型。在这里,音频信号被认为是检测Covid-19的输入。首先对输入信号进行高斯滤波去除噪声,然后进行特征提取。提取频谱滚降、频谱带宽、Mel-frequency倒谱系数(MFCC)、频谱平坦度、过零率、频谱质心、均方能量和频谱收缩等实质性特征进行进一步处理。最后,将DNFN应用于Covid-19检测,并利用设计的JHBO算法训练深度学习模型。据此,将Honey Badger optimization Algorithm (HBA)和Jaya Algorithm相结合,重新设计了JHBO方法。结果基于混合优化的深度学习算法的测试准确率、灵敏度和特异性分别为0.9176、0.9218和0.9219。研究局限性/意义基于jhbo的DNFN方法被开发用于Covid-19检测。所开发的方法可以通过包含其他混合优化算法进行扩展,并且可以提取其他特征以进一步提高检测性能。实际意义提出的新型冠状病毒检测方法可用于医疗等多种应用。基于jhbo的DNFN检测新冠病毒:介绍了一种基于混合优化驱动深度学习模型的新型冠状病毒检测技术。DNFN用于检测Covid-19,将特征向量分为Covid-19和非Covid-19。此外,采用JHBO方法对DNFN进行训练,该方法将HBA算法与Jaya算法相结合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Jaya Honey Badger optimization-based deep neuro-fuzzy network structure for detection of (SARS-CoV) Covid-19 disease by using respiratory sound signals
PurposeThe Covid-19 prediction process is more indispensable to handle the spread and death occurred rate because of Covid-19. However early and precise prediction of Covid-19 is more difficult because of different sizes and resolutions of input image. Thus these challenges and problems experienced by traditional Covid-19 detection methods are considered as major motivation to develop JHBO-based DNFN.Design/methodology/approachThe major contribution of this research is to design an effectual Covid-19 detection model using devised JHBO-based DNFN. Here, the audio signal is considered as input for detecting Covid-19. The Gaussian filter is applied to input signal for removing the noises and then feature extraction is performed. The substantial features, like spectral roll-off, spectral bandwidth, Mel-frequency cepstral coefficients (MFCC), spectral flatness, zero crossing rate, spectral centroid, mean square energy and spectral contract are extracted for further processing. Finally, DNFN is applied for detecting Covid-19 and the deep leaning model is trained by designed JHBO algorithm. Accordingly, the developed JHBO method is newly designed by incorporating Honey Badger optimization Algorithm (HBA) and Jaya algorithm.FindingsThe performance of proposed hybrid optimization-based deep learning algorithm is estimated by means of two performance metrics, namely testing accuracy, sensitivity and specificity of 0.9176, 0.9218 and 0.9219.Research limitations/implicationsThe JHBO-based DNFN approach is developed for Covid-19 detection. The developed approach can be extended by including other hybrid optimization algorithms as well as other features can be extracted for further improving the detection performance.Practical implicationsThe proposed Covid-19 detection method is useful in various applications, like medical and so on.Originality/valueDeveloped JHBO-enabled DNFN for Covid-19 detection: An effective Covid-19 detection technique is introduced based on hybrid optimization–driven deep learning model. The DNFN is used for detecting Covid-19, which classifies the feature vector as Covid-19 or non-Covid-19. Moreover, the DNFN is trained by devised JHBO approach, which is introduced by combining HBA and Jaya algorithm.
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