Search Results - asymmetric denoising autoencoder

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  1. 1

    Multi-Type Missing Imputation of Time-Series Power Equipment Monitoring Data Based on Moving Average Filter–Asymmetric Denoising Autoencoder by Jiang, Ling, Gu, Juping, Zhang, Xinsong, Hua, Liang, Cai, Yueming

    ISSN: 1424-8220, 1424-8220
    Published: Switzerland MDPI AG 08.12.2023
    Published in Sensors (Basel, Switzerland) (08.12.2023)
    “… This leads to the poor quality and utilization difficulties of the collected data. To address this problem, this paper customizes methodology that combines an asymmetric denoising autoencoder (ADAE…”
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    Journal Article
  2. 2

    Two-stage noise aware training using asymmetric deep denoising autoencoder by Lee, Kang Hyun, Kang, Shin Jae, Kang, Woo Hyun, Kim, Nam Soo

    ISSN: 2379-190X
    Published: IEEE 01.03.2016
    “…Ever since the deep neural network (DNN)-based acoustic model appeared, the recognition performance of automatic speech recognition has been greatly improved…”
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    Conference Proceeding Journal Article
  3. 3

    A channel estimation method using denoising autoencoder for large-scale asymmetric backscatter systems by Jung, Chae Yoon, Kang, Jae-Mo, Kim, Dong In

    ISSN: 2405-9595, 2405-9595
    Published: Elsevier B.V 01.04.2024
    Published in ICT express (01.04.2024)
    “… In order to obtain channel data, we design denoising autoencoder which consists of encoder with Feedforward Neural Network (FNN…”
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    Journal Article
  4. 4

    Semi-Supervised Text Simplification with Back-Translation and Asymmetric Denoising Autoencoders by Zhao, Yanbin, Chen, Lu, Chen, Zhi, Yu, Kai

    ISSN: 2331-8422
    Published: Ithaca Cornell University Library, arXiv.org 30.04.2020
    Published in arXiv.org (30.04.2020)
    “…), including denoising autoencoders for language modeling and automatic generation of parallel data by iterative back-translation…”
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    Paper
  5. 5

    Query-by-example surgical activity detection by Gao, Yixin, Vedula, S. Swaroop, Lee, Gyusung I., Lee, Mija R., Khudanpur, Sanjeev, Hager, Gregory D.

    ISSN: 1861-6410, 1861-6429
    Published: Berlin/Heidelberg Springer Berlin Heidelberg 01.06.2016
    “… Our approach includes an unsupervised feature learning module using a stacked denoising autoencoder (SDAE…”
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    Journal Article
  6. 6

    Asymmetric Autoencoders: An NN alternative for resource-constrained devices in IoT networks by Gilbert, Mateus S., de Campos, Marcello L.R., Campista, Miguel Elias M.

    ISSN: 1570-8705, 1570-8713
    Published: Elsevier B.V 01.04.2024
    Published in Ad hoc networks (01.04.2024)
    “… Many solutions using Neural Networks (NNs) have emerged to address both issues, resorting to autoencoders to extract these redundancies to reduce data transmissions in IoT networks and to remove noise from data in general…”
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    Journal Article
  7. 7

    Deep convolutional autoencoder for the simultaneous removal of baseline noise and baseline drift in chromatograms by Kensert, Alexander, Collaerts, Gilles, Efthymiadis, Kyriakos, Van Broeck, Peter, Desmet, Gert, Cabooter, Deirdre

    ISSN: 0021-9673, 1873-3778, 1873-3778
    Published: Netherlands Elsevier B.V 07.06.2021
    Published in Journal of Chromatography A (07.06.2021)
    “…•Autoencoder (AEC) for the simultaneous removal of baseline noise and baseline drift…”
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    Journal Article
  8. 8

    Efficient Bearing Sensor Data Compression via an Asymmetrical Autoencoder with a Lifting Wavelet Transform Layer by Zhu, Xin, Cetin, Ahmet Enis

    ISSN: 2158-1525
    Published: IEEE 25.05.2025
    “… In this paper, a novel asymmetrical autoencoder with a lifting wavelet transform (LWT) layer is developed to compress bearing sensor data…”
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    Conference Proceeding
  9. 9

    Transfer learning and subword sampling for asymmetric-resource one-to-many neural translation by Grönroos, Stig-Arne, Virpioja, Sami, Kurimo, Mikko

    ISSN: 0922-6567, 1573-0573
    Published: Dordrecht Springer Netherlands 01.12.2020
    Published in Machine translation (01.12.2020)
    “… We review these approaches in the context of an asymmetric-resource one-to-many translation task, in which the pair of target languages are related, with one being a very low-resource and the other…”
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    Journal Article
  10. 10

    DEMAE: Diffusion-Enhanced Masked Autoencoder for Hyperspectral Image Classification With Few Labeled Samples by Li, Ziyu, Xue, Zhaohui, Jia, Mingming, Nie, Xiangyu, Wu, Hao, Zhang, Mengxue, Su, Hongjun

    ISSN: 0196-2892, 1558-0644
    Published: New York IEEE 2024
    “… Masked autoencoder (MAE), which is based on Transformer architecture, employs a "mask-reconstruction" strategy for training, allowing the model to be effective for downstream tasks…”
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    Journal Article
  11. 11

    DMAE-EEG: A Pretraining Framework for EEG Spatiotemporal Representation Learning by Zhang, Yifan, Yu, Yang, Li, Hao, Wu, Anqi, Chen, Xin, Liu, Jinfang, Zeng, Ling-Li, Hu, Dewen

    ISSN: 2162-237X, 2162-2388, 2162-2388
    Published: United States IEEE 01.10.2025
    “… To address these challenges, we develop a pretraining framework named DMAE-EEG, a denoising masked autoencoder for mining generalizable spatiotemporal representation from massive unlabeled EEG…”
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    Journal Article
  12. 12

    MAID: Model Attribution via Inverse Diffusion by Zhu, Luyu, Ye, Kai, Yao, Jiayu, Li, Chenxi, Zhao, Luwen, Cao, Yuxin, Wang, Derui, Hao, Jie

    ISSN: 2379-190X
    Published: IEEE 06.04.2025
    “… By employing the inverse diffusion process, we are able to utilize pre-trained Diffusion Models as Denoising Autoencoders, mapping images into a latent space and extracting…”
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    Conference Proceeding
  13. 13

    Asymmetric Adaptation of Deep Features for Cross-Domain Classification in Remote Sensing Imagery by Ammour, Nassim, Bashmal, Laila, Bazi, Yakoub, Al Rahhal, M. M., Zuair, Mansour

    ISSN: 1545-598X, 1558-0571
    Published: Piscataway IEEE 01.04.2018
    Published in IEEE geoscience and remote sensing letters (01.04.2018)
    “… Before the adaptation process, we feed the features obtained from a pretrained convolutional neural network to a denoising autoencoder (DAE…”
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    Journal Article
  14. 14

    Feature Learning for Multispectral Satellite Imagery Classification using Neural Architecture Search by Campbell, Roberto, Coltin, Brian, Furlong, P Michael, McMichael, Scott

    Published: Washington American Geophysical Union 12.12.2019
    “…Automated classification of remote sensing data is an integral tool for earth scientists, and deep learning has proven very successful at solving such…”
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    Paper
  15. 15

    Principal Component Wavelet Networks for Solving Linear Inverse Problems by Tiddeman, Bernard, Ghahremani, Morteza

    ISSN: 2073-8994, 2073-8994
    Published: Basel MDPI AG 01.06.2021
    Published in Symmetry (Basel) (01.06.2021)
    “…—these are asymmetric problems, where the forward problem is easy to solve, but the inverse is difficult and often ill-posed…”
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    Journal Article
  16. 16

    Transfer learning and subword sampling for asymmetric-resource one-to-many neural translation by Stig-Arne Grönroos, Virpioja, Sami, Kurimo, Mikko

    ISSN: 2331-8422
    Published: Ithaca Cornell University Library, arXiv.org 09.12.2020
    Published in arXiv.org (09.12.2020)
    “… We review these approaches in the context of an asymmetric-resource one-to-many translation task, in which the pair of target languages are related, with one being a very low-resource and the other…”
    Get full text
    Paper
  17. 17

    Diffusion-Driven Domain Adaptation for Generating 3D Molecules by Hong, Haokai, Lin, Wanyu, Kay Chen Tan

    ISSN: 2331-8422
    Published: Ithaca Cornell University Library, arXiv.org 01.04.2024
    Published in arXiv.org (01.04.2024)
    “… As the domain shift is typically caused by the structure variations of molecules, e.g., scaffold variations, we leverage a designated equivariant masked autoencoder (MAE…”
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    Paper