2022
DOI: 10.53623/gisa.v2i1.65
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Finite Impulse Response Filter for Electroencephalogram Waves Detection

Abstract: Electroencephalographic data signals consist of electrical signal activity with several characteristics, such as non-periodic patterns and small voltage amplitudes that can mix with noise making it difficult to recognize. This study uses several types of EEG wave signals, namely Delta, Alpha, Beta, and Gamma. The method we use in this study is the application of an impulse response filter to replace the noise obtained before and after the FIR filter is applied. In addition, we also analyzed the quality of seve… Show more

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Cited by 4 publications
(2 citation statements)
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“…For EEG analysis, FIR filters are preferable over IIR filters because they do not distort waveforms. The FIR filter is used in [21] for detecting the EEG waves.…”
Section: Finite Impulse Response (Fir) Filtermentioning
confidence: 99%
“…For EEG analysis, FIR filters are preferable over IIR filters because they do not distort waveforms. The FIR filter is used in [21] for detecting the EEG waves.…”
Section: Finite Impulse Response (Fir) Filtermentioning
confidence: 99%
“…Noting the assumptions of previous research studies ( [27], [28], [29], and [30]) we modeled seizures by overlaying random frequencies over a standard EEG signal. Thus, we wrote a python script that added 30 sine waves of frequencies from 8-12 Hz (randomly chosen), with an amplitude of an FIR (Finite Impulse Response) filter of the amplitudes of the standard signal as suggested by [31] and [32]. Phase shifts from 0 to 2π were assigned randomly to encourage constructive and destructive interference, in an attempt to increase the randomness of the generated signal.…”
Section: Seizure Simulationmentioning
confidence: 99%