Browsing by Subject deep neural network

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  • Authors: Luong, Thien Van;  Advisor: Ko, Youngwook; Matthaiou, Michail; Ngo, Anh Vien; Le, Minh-Tuan; Ngo, Vu-Duc;  Co-Author: - (2021)

    This paper proposes a deep learning (DL)-aided multicarrier (MC) system operating on fading channels, where both modulation and demodulation blocks are modeled by deep neural networks (DNNs), regarded as the encoder and decoder of an autoencoder (AE) architecture, respectively. Unlike existing AE-based systems, which incorporate domain knowledge of a channel equalizer to suppress the effects of wireless channels, the proposed scheme, termed as MC-AE, directly feeds the decoder with the channel state information and received signal, which are then processed in a fully data-driven manner. This new approach enables MC-AE to jointly learn the encoder and decoder to optimize the diversity ...
  • Authors: Zhiquan, He; Xujia, Lan; Jianhe, Yuan;  Advisor: -;  Co-Author: - (2023)

    Adversarial attack aims to fail the deep neural network by adding a small amount of perturbation to the input image, in which the attack success rate and resulting image quality are maximized under the lp norm perturbation constraint. However, the lp norm is not accurately correlated to human perception of image quality. Attack methods based on l0 norm constraint usually suffer from the high computational cost due to the iterative search for candidate pixels to modify.