2017 IEEE Second Ecuador Technical Chapters Meeting (ETCM) 2017
DOI: 10.1109/etcm.2017.8247520
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Wireless devices to restart walking during an episode of FOG on patients with Parkinson's disease

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Cited by 14 publications
(34 citation statements)
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“…FOG detection methods vary in complexity, with the simplest models directly comparing wearable sensor variables to thresholds [29,41,44,46,53,63,73,123]. Threshold methods tended to have poorer detection performance but faster processing time, making them potentially useful in real-time systems [24,70,77,79,92,93]. To improve classification performance, features that can better differentiate between FOG and typical PD gait have been used, such as Fourier transforms [29,34,35,41,44,53,65,69,78], wavelet transforms [51,56,63,71,79,83,91,92,93,96], k-index [59,60,61,62,72,73], freezing of gait criterion (FOGC) [46], freezing of gait detection on glasses (FOGDOG) [70], R-index [94], and the widely-used freeze index [29].…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…FOG detection methods vary in complexity, with the simplest models directly comparing wearable sensor variables to thresholds [29,41,44,46,53,63,73,123]. Threshold methods tended to have poorer detection performance but faster processing time, making them potentially useful in real-time systems [24,70,77,79,92,93]. To improve classification performance, features that can better differentiate between FOG and typical PD gait have been used, such as Fourier transforms [29,34,35,41,44,53,65,69,78], wavelet transforms [51,56,63,71,79,83,91,92,93,96], k-index [59,60,61,62,72,73], freezing of gait criterion (FOGC) [46], freezing of gait detection on glasses (FOGDOG) [70], R-index [94], and the widely-used freeze index [29].…”
Section: Discussionmentioning
confidence: 99%
“…Frequency domain features include freeze index (FI) [29], which was the most widely-used frequency domain feature [23,24,25,29,31,32,33,34,42,44,49,53,54,64,65,69,71,77,78,80,86,88,89,98], peak amplitude and corresponding frequency [40,41,64], standard deviation in frequency domain [50,57,64,74], spectral density centre of mass [50,57,66,74,80,81,86,96], and power of the signal in specific frequency bands [24,25,31,32,33,34,40,42,52,54,58,75,80]. While Fourier transforms are typically used to convert signals from the time domain to frequency domain, Fourier transform limitations have led to increased usage of wavelet approaches [51,56,63,71,79,83,91,92,93,96].…”
Section: Discussionmentioning
confidence: 99%
“…The wavelets operate analogously to Fourier analysis in some applications. The main difference that wavelets have with Fourier transforms is that wavelets perform local analysis, which makes them appropriate for the analysis of signals in the time-frequency domain, while Fourier transforms are global [43,44]. Wavelet techniques allow to divide a complex function into simpler ones and study them separately.…”
Section: Mathematical Tool For Processingmentioning
confidence: 99%
“…All systems used vibratory motors based on rotary and linear electromagnetic actuators. The eccentric rotating mass (ERM) motors identified in [19,[22][23][24][25][26][27]29] correspond to a rotary electromagnetic actuator and the linear resonance actuator (LRA) motors identified in [20,21,24] concern to linear electromagnetic actuators. The number of actuators used was usually one [20,21,27] and two [19,22,23,28], but when the actuators were placed around the torso, hip, or head, the used number increased to four [24,29] and eight [25,26].…”
Section: Technology Supporting Vbsmentioning
confidence: 99%