Search Results - Reduced deep convolutional stack autoencoder

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  1. 1

    Epileptic Seizure Recognition Using Reduced Deep Convolutional Stack Autoencoder and Improved Kernel RVFLN From EEG Signals by Sahani, Mrutyunjaya, Rout, Susanta Kumar, Dash, Pradipta Kishor

    ISSN: 1932-4545, 1940-9990, 1940-9990
    Published: New York IEEE 01.06.2021
    “…In this paper, reduced deep convolutional stack autoencoder (RDCSAE) and improved kernel random vector functional link network (IKRVFLN…”
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    Journal Article
  2. 2

    Precise single step and multistep short-term photovoltaic parameters forecasting based on reduced deep convolutional stack autoencoder and minimum variance multikernel random vector functional network by Sahani, Mrutyunjaya, Choudhury, Sasmita, Siddique, Marif Daula, Parida, Tanmoy, Dash, Pradipta Kishore, Panda, Sanjib Kumar

    ISSN: 0952-1976
    Published: Elsevier Ltd 01.10.2024
    “… To address this, we have developed a novel hybrid model: a reduced deep convolutional stack autoencoder with a minimum variance multikernel random vector functional link network (RDCSAE-MVMRVFLN…”
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    Journal Article
  3. 3

    RDCSAE-RKRVFLN: A unified deep learning framework for robust and accurate DOA estimation by Raiguru, Priyadarshini, Swain, Bhanja Kishor, Rout, Susanta Kumar, Sahani, Mrutyunjaya, Mishra, Rabindra Kishore

    ISSN: 1568-4946, 1872-9681
    Published: Elsevier B.V 01.09.2024
    Published in Applied soft computing (01.09.2024)
    “…This paper introduces an innovative unified deep learning (DL) model, “reduced deep convolutional stack autoencoder (RDCSAE…”
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    Journal Article
  4. 4

    Deep Convolutional Stack Autoencoder of Process Adaptive VMD Data With Robust Multikernel RVFLN for Power Quality Events Recognition by Sahani, Mrutyunjaya, Dash, Pradipta Kishore

    ISSN: 0018-9456, 1557-9662
    Published: New York IEEE 2021
    “…). A novel reduced deep convolutional neural network (RDCNN) embedded with stack autoencoder, that is, RDCSAE structure is introduced to extract the most discriminative…”
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    Journal Article
  5. 5

    Coupling of a lightweight model of reduced convolutional autoencoder with linear SVM classifier to detect brain tumours on FPGA by Chatterjee, Soumita, Pandit, Soumya, Das, Arpita

    ISSN: 0957-4174
    Published: Elsevier Ltd 25.09.2025
    Published in Expert systems with applications (25.09.2025)
    “… Following this preprocessing step, a dual-stack Reduced Convolutional Autoencoder (RCA) unit is coupled with a linear Support Vector Machine (SVM) classifier…”
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    Journal Article
  6. 6

    Unsupervised Deep Learning for Landslide Detection from Multispectral Sentinel-2 Imagery by Shahabi, Hejar, Rahimzad, Maryam, Tavakkoli Piralilou, Sepideh, Ghorbanzadeh, Omid, Homayouni, Saied, Blaschke, Thomas, Lim, Samsung, Ghamisi, Pedram

    ISSN: 2072-4292, 2072-4292
    Published: Basel MDPI AG 20.11.2021
    Published in Remote sensing (Basel, Switzerland) (20.11.2021)
    “…This paper proposes a new approach based on an unsupervised deep learning (DL) model for landslide detection…”
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    Journal Article
  7. 7

    Impact of Patch-Size on Classification Accuracy of Latent Fingerprint Image in Stacked Convolutional Auto-encoder based Segmentation and Detection by Chhabra, Megha, Shukla, Manoj Kumar, Ravulakollu, Kiran Kumar

    Published: IEEE 07.10.2020
    “…) using a stack of convolutional auto-encoders. The idea is to early detect the structure of interest from the image using a color-based mask…”
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    Conference Proceeding
  8. 8

    Light Field Intrinsics with a Deep Encoder-Decoder Network by Alperovich, Anna, Johannsen, Ole, Strecke, Michael, Goldluecke, Bastian

    ISSN: 1063-6919
    Published: IEEE 01.06.2018
    “…We present a fully convolutional autoencoder for light fields, which jointly encodes stacks of horizontal and vertical epipolar plane images through a deep network of residual layers…”
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    Conference Proceeding