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Analysis and Assessment of Dynamics of Neurocomputer Performance Measures

机译:神经计算机性能测度动力学的分析与评估

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The article discusses the benefits of neurocomputer interfaces aimed at classifying patterns of EEG signals which are converted into output signals for controlling actuators. To detect and classify signals, artificial neural networks of various architectures are used to increase recognition efficiency. The accuracy of the biological signals depends on the condition how measurements were performed and filtered to prepare the data for training and testing of ANNs. The development of mathematical models and teaching methodology will facilitate neural networks testing of various types and configurations. It will also help to evaluate and improve the accuracy of the classifier as well as to eliminate and compensate for the shortcomings of various software products and libraries. The assessment of neurocomputer performance measures, even of a well-trained network implemented in the classifier, is complicated by identifying events in a dynamic measurement system. The creation of a system of adaptive filters and convolution of input signals made it possible to identify the necessary patterns in the EEG to facilitate the implementation of the neurocomputer interface.
机译:本文讨论了旨在分类EEG信号模式的神经计算机接口的好处,这些信号被转换为用于控制执行器的输出信号。为了检测和分类信号,使用各种体系结构的人工神经网络来提高识别效率。生物信号的准确性取决于条件,即如何进行测量和过滤以准备用于训练和测试ANN的数据。数学模型和教学方法的发展将促进各种类型和配置的神经网络测试。它还将有助于评估和提高分类器的准确性,并消除和弥补各种软件产品和库的缺点。通过识别动态测量系统中的事件,即使是在分类器中实施的训练有素的网络,对神经计算机性能指标的评估也很复杂。自适应滤波器系统的创建和输入信号的卷积使得有可能在EEG中识别必要的模式,以促进神经计算机接口的实现。

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