Munjal Ritu, Varshney Tarun
Department of Electrical Electronics and Communication Engineering, Sharda University, Greater Noida, Uttar Pradesh, India.
Ann Neurosci. 2025 Jul 19:09727531251351067. doi: 10.1177/09727531251351067.
Meditation and practices are being adopted and gaining considerable interest as a tool that prevents the occurrence of numerous ailments. Meditation is well prescribed in several old religious manuscripts and has origins in past Indian practices that encourage emotional and personal well-being. Two different classification tasks were performed. One way to identify the mind state allied with meditation and another was to identify the mind state allied with meditation. The tasks were performed for classifying non-meditative and meditative states with varying cut-off frequencies to obtain the best results.
This study is mainly focused on how the high-pass cut-off influences the single-trial accuracy of the model. The performance of the model depends on appropriate pre-processing. The results of High-pass Filter (HPF) at different settings were methodically assessed. Although there are many factors on which the accuracy of the model depends, like the HPF, Independent Components Analysis (ICA), model building and the hyperparameter tuning. One important preprocessing step is to effectively choose the filter to improve the classification results.
Inception Convolutional Gated Recurrent Neural Network (IC-RNN) and Convolutional Neural Network (CNN) models were designed and compared to examine the varying effects of HPF.
The highest accuracy of 86.19% was attained for IC-RNN, and 99.45% was achieved for CNN model with filter setting at 1 Hz for the meditation classification task. The highest accuracy of 88.15% was attained for IC-RNN, and 100% was achieved for CNN model with the same filter setting at 1 Hz for the meditation classification task. HPF at 1 Hz steadily produced good results. Based on the outcomes, the guidelines are suggested for filter settings to increase the performance of the model.
冥想及相关练习正作为一种预防多种疾病发生的工具被广泛采用并备受关注。冥想在一些古老的宗教手稿中有详细记载,其起源于过去印度的一些促进情感和个人幸福的修行方式。进行了两项不同的分类任务。一种方法是识别与某种冥想相关的心理状态,另一种是识别与另一种冥想相关的心理状态。这些任务是通过设置不同的截止频率来对非冥想状态和冥想状态进行分类以获得最佳结果。
本研究主要关注高通截止频率如何影响模型的单次试验准确性。模型的性能取决于适当的预处理。系统评估了不同设置下高通滤波器(HPF)的结果。尽管模型的准确性取决于许多因素,如高通滤波器、独立成分分析(ICA)、模型构建和超参数调整。一个重要的预处理步骤是有效选择滤波器以改善分类结果。
设计并比较了初始卷积门控循环神经网络(IC - RNN)和卷积神经网络(CNN)模型,以检验高通滤波器的不同影响。
在某种冥想分类任务中,当滤波器设置为1Hz时,IC - RNN达到了86.19%的最高准确率,CNN模型达到了99.45%的准确率。在另一种冥想分类任务中,当滤波器设置为1Hz时,IC - RNN达到了88.15%的最高准确率,CNN模型达到了100%的准确率。1Hz的高通滤波器持续产生良好结果。基于这些结果,建议了滤波器设置的指导方针以提高模型性能。