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[Author] Shoichi IIZUKA(4hit)

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  • RSSI-Based Living-Body Radar Using Single RF Front-End and Tunable Parasitic Antennas

    Katsumi SASAKI  Naoki HONMA  Takeshi NAKAYAMA  Shoichi IIZUKA  

     
    PAPER-DOA Estimation

      Pubricized:
    2017/08/22
      Vol:
    E101-B No:2
      Page(s):
    392-399

    This paper presents the Received-Signal-Strength-Indicator (RSSI) based living-body radar, which uses only a single RF front-end and a few parasitic antennas. This radar measures the RSSI variation at the single active antenna while varying the terminations of the parasitic antennas. The propagation channel is estimated from just the temporal transition of RSSI; our proposal reconstructs the phase information of the signal. In this paper, we aim to estimate the direction of living-body. Experiments are carried out and it is found that most angular errors are within the limit of the angular width of the living-body.

  • Estimation Method of the Number of Targets Using Cooperative Multi-Static MIMO Radar

    Nobuyuki SHIRAKI  Naoki HONMA  Kentaro MURATA  Takeshi NAKAYAMA  Shoichi IIZUKA  

     
    PAPER-Sensing

      Pubricized:
    2021/06/04
      Vol:
    E104-B No:12
      Page(s):
    1539-1546

    This paper proposes a method for cooperative multi-static Multiple Input Multiple Output (MIMO) radar that can estimate the number of targets. The purpose of this system is to monitor humans in an indoor environment. First, target positions within the estimation range are roughly detected by the Capon method and the mode vector corresponding to the detected positions is calculated. The mode vector is multiplied by the eigenvector to eliminate the virtual image. The spectrum of the evaluation function is calculated from the remaining positions, and the number of peaks in the spectrum is defined as the number of targets. Experiments carried out in an indoor environment confirm that the proposed method can estimate the number of targets with high accuracy.

  • Human Activity Identification by Height and Doppler RCS Information Detected by MIMO Radar

    Dai SASAKAWA  Naoki HONMA  Takeshi NAKAYAMA  Shoichi IIZUKA  

     
    PAPER

      Pubricized:
    2019/01/22
      Vol:
    E102-B No:7
      Page(s):
    1270-1278

    This paper introduces a method that identifies human activity from the height and Doppler Radar Cross Section (RCS) information detected by Multiple-Input Multiple-Output (MIMO) radar. This method estimates the three-dimensional target location by applying the MUltiple SIgnal Classification (MUSIC) method to the observed MIMO channel; the Doppler RCS is calculated from the signal reflected from the target. A gesture recognition algorithm is applied to the trajectory of the temporal transition of the estimated human height and the Doppler RCS. In experiments, the proposed method achieves over 90% recognition rate (average).

  • Device-Parameter Estimation with Sensitivity-Configurable Ring Oscillator

    Shoichi IIZUKA  Yuma HIGUCHI  Masanori HASHIMOTO  Takao ONOYE  

     
    PAPER-Device and Circuit Modeling and Analysis

      Vol:
    E98-A No:12
      Page(s):
    2607-2613

    The RO (Ring-Oscillator)-based sensor is one of easily-implementable variation sensors, but for decomposing the observed variability into multiple unique device-parameter variations, a large number of ROs with different structures and sensitivities to device-parameters is required. This paper proposes an area efficient device parameter estimation method with sensitivity-configurable ring oscillator (RO). This sensitivity-configurable RO has a number of configurations and the proposed method exploits this property for reducing sensor area and/or improving estimation accuracy. The proposed method selects multiple sets of sensitivity configurations, obtains multiple estimates and computes the average of them for accuracy improvement exploiting an averaging effect. Experimental results with a 32-nm predictive technology model show that the proposed averaging with multiple estimates can reduce the estimation error by 49% or reduce the sensor area by 75% while keeping the accuracy. Compared to previous work with iterative estimation, 23% accuracy improvement is achieved.