2021
DOI: 10.1016/j.inffus.2020.11.008
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A review of Hidden Markov models and Recurrent Neural Networks for event detection and localization in biomedical signals

Abstract: Biomedical signals carry signature rhythms of complex physiological processes that control our daily bodily activity. The properties of these rhythms indicate the nature of interaction dynamics among physiological processes that maintain a homeostasis. Abnormalities associated with diseases or disorders usually appear as disruptions in the structure of the rhythms which makes isolating these rhythms and the ability to differentiate between them, indispensable. Computer aided diagnosis systems are ubiquitous no… Show more

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Cited by 44 publications
(24 citation statements)
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References 190 publications
(241 reference statements)
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“…Few variants of these networks, such as LSTM (long short term memory) and GRU, are created to find local and global patterns efficiently (Li et al, 2018;Hsu et al, 1990). The standard type of these networks is usually used as a baseline for creating models on signal processing and time-dependent datasets (Khalifa et al, 2020;Zihlmann et al, 2017). However, a combination of these networks with convolutional layers is popular among researchers aiming to reach high performances with more complex models.…”
Section: E Recurrent Neural Network (Rnns)mentioning
confidence: 99%
“…Few variants of these networks, such as LSTM (long short term memory) and GRU, are created to find local and global patterns efficiently (Li et al, 2018;Hsu et al, 1990). The standard type of these networks is usually used as a baseline for creating models on signal processing and time-dependent datasets (Khalifa et al, 2020;Zihlmann et al, 2017). However, a combination of these networks with convolutional layers is popular among researchers aiming to reach high performances with more complex models.…”
Section: E Recurrent Neural Network (Rnns)mentioning
confidence: 99%
“…Finally, according to the classification results of the two-level classifiers and the weights of each level of classifiers, the final classification results are obtained by matching and accumulating. Literature [ 5 ] attributes the spectrum classification of music to the problem of regression. According to quality, melody, and rhythm characteristics of music, SVR regression algorithm is used to calculate the arousal and value values of each song and locate them in the emotion plane proposed by Thayer.…”
Section: Introductionmentioning
confidence: 99%
“…Markov chain model is widely used in different fields of science, technology and social science. It finds several biomedical applications like the estimation of event detection and localization of biomedical signals like EEG and lung sounds (10,11) . It is also employed in laser-based applications to understand the system entropy in thermal lens signals and beam quality analysis (12,13) .…”
Section: Introductionmentioning
confidence: 99%