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Automating Anxiety Detection using Respiratory Signal Analysis

机译:使用呼吸信号分析自动化焦虑检测

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In this paper, we explored the development of an anxiety detection (AnD) system using the respiratory signal as its input. Time and frequency domain statistical features derived from breath-to-breath (BB) interval series of respiratory signal is input to a support vector machine (SVM) backend classifier. We used data from normative population, individuals with anxiety disorders and regular meditators for validating the effectiveness of the system. We experimented with different kernels for the backend SVM classifier in our baseline system, and note that the best results were obtained for the polynomial kernel, a classification accuracy of 69.23%. It may be noted that for classification using SVM, either the features should match the kernel, or the kernel that matches the features should be selected for optimum performance. Often, this process is very difficult, owing to the difficulty in identifying a matching kernel. Alternatively, we may transform the feature vectors to a higher dimensional linear space, and then use SVM with a linear kernel. We used Fisher vector encoding (FVE) for mapping the features to a higher dimensional linear space. Also, we examined principal component analysis (PCA) and covariance normalization on the input features and the transformed feature vectors, in an effort to reduce the effect of patient specific variations in the signal to improve the performance. A performance improvement of 7.69% absolute using PCA-AnD, 15.38% absolute using FVE-AnD, and 15.38% absolute using CVN-AnD,over the baseline system were obtained. Further, we combined FVE and CVN, and obtained FVE-CVN system with a classification accuracy of 92.30% absolute, which is 23.08% absolute improved over the baseline system.
机译:在本文中,我们探讨了使用呼吸信号作为其输入的焦虑检测(和)系统的开发。从呼吸到呼气(BB)间隔系列的呼吸信号导出的时间和频率域统计特征被输入到支持向量机(SVM)后端分类器。我们使用来自规范人群的数据,具有焦虑障碍的个人和常规冥想者来验证系统的有效性。我们在基线系统中尝试了用于后端SVM分类器的不同内核,并注意到多项式内核获得了最佳结果,分类精度为69.23%。可以注意到,对于使用SVM进行分类,要么要匹配内核,或者应选择与要素匹配的内核以获得最佳性能。通常,由于难以识别匹配的内核,这种过程非常困难。或者,我们可以将特征向量转换为更高的尺寸线性空间,然后使用具有线性内核的SVM。我们使用Fisher向量编码(FVE)来将要素映射到更高的维度线性空间。此外,我们检查了输入特征和转换特征向量的主成分分析(PCA)和协方差标准化,以减少信号中患者特定变化的效果来提高性能。获得了使用FVE-and,使用CVN-and,在基线系统上使用FVA和15.38%绝对使用PCA-and 15.38%的绝对的性能提高。此外,我们组合FVE和CVN,并获得了92.30%绝对的分类精度的FVE-CVN系统,其在基线系统上的绝对增长23.08%。

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