From Frequency Content to Signal Dynamics Using DNNs

被引:0
|
作者
De Pedro-Carracedo, Javier [1 ,2 ]
Fuentes-Jimenez, David [2 ]
Fernanda Cabrera-Umpierrez, Maria [3 ]
Gonzalez-Marcos, Ana P. [1 ]
机构
[1] Univ Politecn Madrid UPM, Dept Tecnol Foton & Bioingn, ETSI Telecomunicac, Madrid 28040, Spain
[2] Univ Alcala UAH, Dept Automat, Eseuela Politecn Super, Madrid 28871, Spain
[3] Univ Politecn Madrid UPM, ETSI Telecomunicac, Life Supporting Technol LifeSTech, Madrid 28040, Spain
来源
IEEE ACCESS | 2022年 / 10卷
关键词
Biological signals; DNN architecture; dynamic behavior; power spectrum; spectrogram; timescales; PULSE-WAVE; PHOTOPLETHYSMOGRAM; COMPLEX;
D O I
10.1109/ACCESS.2022.3224426
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
This study developed a novel method for analyzing and decomposing a signal into its main dynamics for small and large timescales. Our proposal is based on a decoupled hybrid system of convolutional and recurrent neural networks that uses as inputs the power spectrum and spectrogram of a given signal, giving as output the dynamic behavior. We define the dynamic classification predicted of the signal using previously known dynamics characterized through training signals: periodic, quasi-periodic, aperiodic, chaotic, and randomness. We created a synthetic dataset comprising more than 50 training signals from different categories. For the real-world dataset, we used photoplethysmographic signals from 40 students obtained from a Spanish medical study. We tested the developed system's performance in real biological and synthetical signals, obtaining noteworthy results. All the results are evaluated qualitatively and quantitatively. Still, given the novelty and the lack of similar works, we cannot compare reliably and rigorously our results with other works, at least quantitatively. We can retrieve from the exposed results in this work three key ideas: the DNN-based solutions are capable of learning and generalizing the dynamics behavior of signals; the proposal learned correctly to distinguish between the reference dynamics provided and find some unidirectional similarities in the aperiodicity cases; and the results obtained using real-world PPG signals reveal that biological signals seem to exhibit a multi-dynamic behavior that changes depending on the used timescale, being quasi-periodically dominant in the short-term and aperiodically dominant in the long-term.
引用
收藏
页码:123885 / 123898
页数:14
相关论文
共 50 条
  • [21] Detecting Trojaned DNNs Using Counterfactual Attributions
    Sikka, Karan
    Sur, Indranil
    Roy, Anirban
    Divakaran, Ajay
    Jha, Susmit
    2023 IEEE INTERNATIONAL CONFERENCE ON ASSURED AUTONOMY, ICAA, 2023, : 76 - 85
  • [22] Scene Invariant Virtual Gates Using DNNs
    Denman, Simon
    Fookes, Clinton
    Yarlagadda, Prasad K. D. V.
    Sridharan, Sridha
    IEEE TRANSACTIONS ON CIRCUITS AND SYSTEMS FOR VIDEO TECHNOLOGY, 2019, 29 (09) : 2637 - 2651
  • [23] Time-Frequency Ridge Analysis using on distinguish regular signal from arc-fault signal
    Pan, JunJie
    Zhu, HongWei
    Chen, LiSheng
    2013 IEEE INTERNATIONAL WORKSHOP ON INTELLIGENT ENERGY SYSTEMS (IWIES), 2013, : 203 - 208
  • [24] Evaluation of emission from a PCB by using crosstalk between a low frequency signal trace and a digital signal trace
    Oka, N
    Miyazaki, C
    Nitta, S
    IEICE TRANSACTIONS ON COMMUNICATIONS, 2000, E83B (03) : 586 - 592
  • [25] Assessing systematic weaknesses of DNNs using counterfactuals
    Sujan Sai Gannamaneni
    Michael Mock
    Maram Akila
    AI and Ethics, 2024, 4 (1): : 27 - 35
  • [26] Ambisonic Signal Processing DNNs Guaranteeing Rotation, Scale and Time Translation Equivariance
    Sato, Ryotaro
    Niwa, Kenta
    Kobayashi, Kazunori
    IEEE-ACM TRANSACTIONS ON AUDIO SPEECH AND LANGUAGE PROCESSING, 2021, 29 : 1449 - 1462
  • [27] Audio-Based Objectionable Content Detection Using Discriminative Transforms of Time-Frequency Dynamics
    Kim, Myung Jong
    Kim, Hoirin
    IEEE TRANSACTIONS ON MULTIMEDIA, 2012, 14 (05) : 1390 - 1400
  • [28] Signal Processing in the Frequency Domain Using Wavelets
    Klionskiy, D. M.
    Kupriyanov, M. S.
    Dorokhov, A. V.
    Kaplun, D. I.
    Lilius, J.
    PROCEEDINGS OF 2017 XX IEEE INTERNATIONAL CONFERENCE ON SOFT COMPUTING AND MEASUREMENTS (SCM), 2017, : 319 - 322
  • [29] Frequency estimation using signal reconstruction approach
    Aalam, Mir Khadim
    Shubhanga, K. N.
    ELECTRIC POWER SYSTEMS RESEARCH, 2024, 226
  • [30] Errors in estimates of signal frequency from the instantaneous frequency of the process
    Blatov, V.V.
    Soviet journal of communications technology & electronics, 1989, 34 (16): : 56 - 59