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Respiratory signal analysis using PCA, FFT and ARTFA

机译:使用PCA,FFT和ARTFA的呼吸信号分析

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Sinus patients, both humans and animals, are increasing day by day in the world. That's why today signal analysis has been the need to know the diseases in the patient. Biomedical signal processing (BSP) has great importance in the life of every human and animal. Without BSP signals cannot be analysed, resulting in failure of disease acknowledgment. In this paper respiratory signals of Sinus and Normal Person has been analysed using Principal Component Analysis (PCA), Fast Fourier Transform (FFT) and Auto-Regressive Time-Frequency Analysis (ARTFA). PCA is used where dimension reduction is required. It has found many applications in BSP. ARTFA allows us to follow the changes in frequencies involved in the signal through time. For this, frequency changes in time are required to be observed. FFT examines the signal in frequency domain and calculates the spectral function (SF). In this paper, the variance of First Principal Component and Second Principal Component have been calculated for Sinus and Normal Person and these values are 86.94%, 13.05% and 92.733%, 7.266% respectively.
机译:窦患者,人类和动物,都在世界上日益增加。这就是为什么今天信号分析一直需要了解患者的疾病。生物医学信号处理(BSP)在每个人和动物的生命中都非常重要。没有BSP信号无法分析,导致疾病确认的失败。在本文的本文中,使用主成分分析(PCA),快速傅里叶变换(FFT)和自动回归时频分析(ARTFA)进行了窦和正常人的呼吸信号。使用PCA,其中需要尺寸减少。它在BSP中找到了许多应用程序。 ARTFA允许我们遵循信号通过时间涉及的频率的变化。为此,需要观察到频率变化。 FFT检查频域中的信号并计算光谱功能(SF)。本文对窦和正常人计算了第一主成分和第二主成分的方差,这些值分别为86.94%,13.05%和92.73%,分别为7.266%。

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