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[Author] Yongchul KIM(4hit)

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  • Optimal Placement of Transparent Relay Stations in 802.16j Mobile Multihop Relay Networks Open Access

    Yongchul KIM  Mihail L. SICHITIU  

     
    PAPER-Wireless Communication Technologies

      Vol:
    E94-B No:9
      Page(s):
    2582-2591

    WiMAX (IEEE 802.16) has emerged as a promising radio access technology for providing high speed broadband connectivity to subscribers over large geographic regions. New enhancements allow deployments of relay stations (RSs) that can extend the coverage of the base station (BS), increase cell capacity, or both. In this paper, we consider the placement of transparent RSs that maximize the cell capacity. We provide a closed-form approximation for the optimal location of RS inside a cell. A numerical analysis of a number of case studies validates the closed-form approximation. The numerical results show that the closed-form approximation is reasonably accurate.

  • Toward Selective Membership Inference Attack against Deep Learning Model

    Hyun KWON  Yongchul KIM  

     
    LETTER

      Pubricized:
    2022/07/26
      Vol:
    E105-D No:11
      Page(s):
    1911-1915

    In this paper, we propose a selective membership inference attack method that determines whether certain data corresponding to a specific class are being used as training data for a machine learning model or not. By using the proposed method, membership or non-membership can be inferred by generating a decision model from the prediction of the inference models and training the confidence values for the data corresponding to the selected class. We used MNIST as an experimental dataset and Tensorflow as a machine learning library. Experimental results show that the proposed method has a 92.4% success rate with 5 inference models for data corresponding to a specific class.

  • CAPTCHA Image Generation Systems Using Generative Adversarial Networks

    Hyun KWON  Yongchul KIM  Hyunsoo YOON  Daeseon CHOI  

     
    LETTER-Information Network

      Pubricized:
    2017/10/26
      Vol:
    E101-D No:2
      Page(s):
    543-546

    We propose new CAPTCHA image generation systems by using generative adversarial network (GAN) techniques to strengthen against CAPTCHA solvers. To verify whether a user is human, CAPTCHA images are widely used on the web industry today. We introduce two different systems for generating CAPTCHA images, namely, the distance GAN (D-GAN) and composite GAN (C-GAN). The D-GAN adds distance values to the original CAPTCHA images to generate new ones, and the C-GAN generates a CAPTCHA image by composing multiple source images. To evaluate the performance of the proposed schemes, we used the CAPTCHA breaker software as CAPTCHA solver. Then, we compared the resistance of the original source images and the generated CAPTCHA images against the CAPTCHA solver. The results show that the proposed schemes improve the resistance to the CAPTCHA solver by over 67.1% and 89.8% depending on the system.

  • Advanced Ensemble Adversarial Example on Unknown Deep Neural Network Classifiers

    Hyun KWON  Yongchul KIM  Ki-Woong PARK  Hyunsoo YOON  Daeseon CHOI  

     
    PAPER-Artificial Intelligence, Data Mining

      Pubricized:
    2018/07/06
      Vol:
    E101-D No:10
      Page(s):
    2485-2500

    Deep neural networks (DNNs) are widely used in many applications such as image, voice, and pattern recognition. However, it has recently been shown that a DNN can be vulnerable to a small distortion in images that humans cannot distinguish. This type of attack is known as an adversarial example and is a significant threat to deep learning systems. The unknown-target-oriented generalized adversarial example that can deceive most DNN classifiers is even more threatening. We propose a generalized adversarial example attack method that can effectively attack unknown classifiers by using a hierarchical ensemble method. Our proposed scheme creates advanced ensemble adversarial examples to achieve reasonable attack success rates for unknown classifiers. Our experiment results show that the proposed method can achieve attack success rates for an unknown classifier of up to 9.25% and 18.94% higher on MNIST data and 4.1% and 13% higher on CIFAR10 data compared with the previous ensemble method and the conventional baseline method, respectively.