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Orthogonal features-based EEG signal denoising using fractionally compressed autoencoder

机译:基于正交的功能的EEG信号使用分馏压缩的autoencoder去噪

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摘要

A fractional-based compressed auto-encoder architecture has been introduced to solve the problem of denoising electroencephalogram (EEG) signals. The architecture makes use of fractional calculus to calculate the gradients during the back-propagation process, as a result of which a new hyper-parameter in the form of fractional order a has been introduced which can be tuned to get the best denoising performance. Additionally, to avoid substantial use of memory resources, the model makes use of orthogonal features in the form of Tchebichef moments as input. The orthogonal features have been used in achieving compression at the input stage. Considering the growing use of low energy devices, compression of neural networks becomes imperative. Here, the auto-encoder's weights are compressed using the randomized singular value decomposition (RSVD) algorithm during training while evaluation is performed using various compression ratios. The experimental results show that the proposed fractionally compressed architecture provides improved denoising results on the standard datasets when compared with the existing methods.
机译:已经引入了基于分数的压缩式自动编码器架构来解决去噪脑电图(EEG)信号的问题。该架构利用分数微积分来计算在背部传播过程中的梯度,结果介绍了分数阶A形式的新超参数,可以调整以获得最佳的去噪性能。另外,为了避免大量使用内存资源,模型利用Tchebichef时刻形式的正交特征作为输入。正交特征已被用于在输入阶段实现压缩。考虑到不断使用低能量装置的使用,神经网络的压缩变得迫切。这里,在使用各种压缩比率进行评估期间,使用随机奇异值分解(RSVD)算法来压缩自动编码器的权重。实验结果表明,与现有方法相比,所提出的分馏压缩架构在标准数据集中提供了改进的去噪结果。

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