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[Author] Yuya KASE(3hit)

1-3hit
  • Accuracy Improvement in DOA Estimation with Deep Learning Open Access

    Yuya KASE  Toshihiko NISHIMURA  Takeo OHGANE  Yasutaka OGAWA  Takanori SATO  Yoshihisa KISHIYAMA  

     
    PAPER-Antennas and Propagation

      Pubricized:
    2021/12/01
      Vol:
    E105-B No:5
      Page(s):
    588-599

    Direction of arrival (DOA) estimation of wireless signals is demanded in many applications. In addition to classical methods such as MUSIC and ESPRIT, non-linear algorithms such as compressed sensing have become common subjects of study recently. Deep learning or machine learning is also known as a non-linear algorithm and has been applied in various fields. Generally, DOA estimation using deep learning is classified as on-grid estimation. A major problem of on-grid estimation is that the accuracy may be degraded when the DOA is near the boundary. To reduce such estimation errors, we propose a method of combining two DNNs whose grids are offset by one half of the grid size. Simulation results show that our proposal outperforms MUSIC which is a typical off-grid estimation method. Furthermore, it is shown that the DNN specially trained for a close DOA case achieves very high accuracy for that case compared with MUSIC.

  • Fundamental Trial on DOA Estimation with Deep Learning Open Access

    Yuya KASE  Toshihiko NISHIMURA  Takeo OHGANE  Yasutaka OGAWA  Daisuke KITAYAMA  Yoshihisa KISHIYAMA  

     
    PAPER-Antennas and Propagation

      Pubricized:
    2020/04/21
      Vol:
    E103-B No:10
      Page(s):
    1127-1135

    Direction of arrival (DOA) estimation of wireless signals has a long history but is still being investigated to improve the estimation accuracy. Non-linear algorithms such as compressed sensing are now applied to DOA estimation and achieve very high performance. If the large computational loads of compressed sensing algorithms are acceptable, it may be possible to apply a deep neural network (DNN) to DOA estimation. In this paper, we verify on-grid DOA estimation capability of the DNN under a simple estimation situation and discuss the effect of training data on DNN design. Simulations show that SNR of the training data strongly affects the performance and that the random SNR data is suitable for configuring the general-purpose DNN. The obtained DNN provides reasonably high performance, and it is shown that the DNN trained using the training data restricted to close DOA situations provides very high performance for the close DOA cases.

  • Deep Neural Networks Based End-to-End DOA Estimation System Open Access

    Daniel Akira ANDO  Yuya KASE  Toshihiko NISHIMURA  Takanori SATO  Takeo OHGANE  Yasutaka OGAWA  Junichiro HAGIWARA  

     
    PAPER

      Pubricized:
    2023/09/11
      Vol:
    E106-B No:12
      Page(s):
    1350-1362

    Direction of arrival (DOA) estimation is an antenna array signal processing technique used in, for instance, radar and sonar systems, source localization, and channel state information retrieval. As new applications and use cases appear with the development of next generation mobile communications systems, DOA estimation performance must be continually increased in order to support the nonstop growing demand for wireless technologies. In previous works, we verified that a deep neural network (DNN) trained offline is a strong candidate tool with the promise of achieving great on-grid DOA estimation performance, even compared to traditional algorithms. In this paper, we propose new techniques for further DOA estimation accuracy enhancement incorporating signal-to-noise ratio (SNR) prediction and an end-to-end DOA estimation system, which consists of three components: source number estimator, DOA angular spectrum grid estimator, and DOA detector. Here, we expand the performance of the DOA detector and angular spectrum estimator, and present a new solution for source number estimation based on DNN with very simple design. The proposed DNN system applied with said enhancement techniques has shown great estimation performance regarding the success rate metric for the case of two radio wave sources although not fully satisfactory results are obtained for the case of three sources.