A FRAMEWORK FOR DECODING PHYSIOLOGICAL AND NEURAL SIGNAL USING LONG SHORT-TERM MEMORY (LSTM)

O. Mary
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Abstract

Machine learning for deciphering physiological and neural signals holds great promise for use in creating brain-computer interfaces. (BCIs). Brain-computer interfaces (BCIs) are tools for using mental activity to operate mechanical or electronic equipment. To convert these signals into actionable instructions for the external device, machine learning algorithms are employed. Brain-computer interfaces (BCIs) have shown considerable promise in enhancing the lives of people who are unable to use their limbs normally due to injury or illness. This paper presents an LSTM model for the decoding of physiological and neural signals. In this paper, an electroencephalography brain signal data was used. The dataset was pre-processed so as to remove noise from the data. The pre-processed data was used in training the LSTM model. The LSTM model was trained on fourteen (14) steps. The result of the LSTM model showed an accuracy of 85% at the first step and a validation (testing) accuracy of 90%. For the fourteenth step, the model achieved an accuracy result of 98% for training and 94% for validation (testing). We also evaluated the performance of the model using a classification report and confusion matrix. The result of the classification report shows an accuracy of 95%. This means that the performance of the model on the test data is efficient. The confusion matrix was used in how well the model classified the electroencephalography signal The result of the confusion matrix shows that the model predicted the result correctly to be neutral 151 out of 153, positive to be 127 out of 142, and negative to be 128 out of 132. The result shows that the level of false positive and negative values is minimal.
利用长短期记忆(lstm)解码生理和神经信号的框架
用于破译生理和神经信号的机器学习在创建脑机接口方面具有很大的前景。(bci)。脑机接口(bci)是利用心理活动来操作机械或电子设备的工具。为了将这些信号转换为外部设备的可操作指令,采用了机器学习算法。脑机接口(bci)在改善因受伤或疾病而无法正常使用四肢的人们的生活方面显示出相当大的希望。提出了一种用于生理和神经信号解码的LSTM模型。本文采用脑电图脑信号数据。对数据集进行预处理,去除数据中的噪声。将预处理后的数据用于LSTM模型的训练。LSTM模型在14个步骤上进行训练。LSTM模型在第一步的准确率为85%,验证(测试)准确率为90%。对于第14步,模型的训练准确率为98%,验证(测试)准确率为94%。我们还使用分类报告和混淆矩阵评估了模型的性能。分类报告的准确率为95%。这意味着模型在测试数据上的性能是有效的。混淆矩阵用于模型对脑电图信号的分类。混淆矩阵的结果表明,该模型正确地预测了153个脑电图信号中的中性151个,142个脑电图信号中的阳性127个,132个脑电图信号中的阴性128个。结果表明,该方法的假阳性和假阴性水平是最小的。
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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