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[Keyword] Ada(1871hit)

121-140hit(1871hit)

  • An Energy-Efficient Hybrid Precoding Design in mmWave Massive MIMO Systems

    Xiaolei QI  Gang XIE  Yuanan LIU  

     
    PAPER-Wireless Communication Technologies

      Pubricized:
    2020/11/26
      Vol:
    E104-B No:6
      Page(s):
    647-653

    The hybrid precoding (HP) technique has been widely considered as a promising approach for millimeter wave communication systems. In general, the existing HP structure with a complicated high-resolution phase shifter network can achieve near-optimal spectral efficiency, however, it involves high energy consumption. The HP architecture with an energy-efficient switch network can significantly reduce the energy consumption. To achieve maximum energy efficiency, this paper focuses on the HP architecture with switch network and considers a novel adaptive analog network HP structure for such mmWave MIMO systems, which can provide potential array gains. Moreover, a multiuser adaptive coordinate update algorithm is proposed for the HP design problem of this new structure. Simulation results verify that our proposed design can achieve better energy efficiency than other recently proposed HP schemes when the number of users is small.

  • Noncontact Monitoring of Heartbeat and Movements during Sleep Using a Pair of Millimeter-Wave Ultra-Wideband Radar Systems Open Access

    Takuya SAKAMOTO  Sohei MITANI  Toru SATO  

     
    PAPER-Sensing

      Pubricized:
    2020/10/06
      Vol:
    E104-B No:4
      Page(s):
    463-471

    We experimentally evaluate the performance of a noncontact system that measures the heartbeat of a sleeping person. The proposed system comprises a pair of radar systems installed at two different positions. We use millimeter-wave ultra-wideband multiple-input multiple-output array radar systems and evaluate the performance attained in measuring the heart inter-beat interval and body movement. The importance of using two radar systems instead of one is demonstrated in this paper. We conduct three types of experiments; the first and second experiments are radar measurements of three participants lying on a bed with and without body movement, while the third experiment is the radar measurement of a participant actually sleeping overnight. The experiments demonstrate that the performance of the radar-based vital measurement strongly depends on the orientation of the person under test. They also show that the proposed system detects 70% of rolling-over movements made overnight.

  • Subsurface Velocity Change Estimation of Pavement with Multistatic GPR System

    Kazutaka KIKUTA  Li YI  Lilong ZOU  Motoyuki SATO  

     
    BRIEF PAPER-Microwaves, Millimeter-Waves

      Pubricized:
    2020/08/14
      Vol:
    E104-C No:4
      Page(s):
    144-147

    In this paper, we propose a cross-correlation method applied to multistatic ground penetrating radar (GPR) data sets to detect road pavement damage. Pavement cracks and delamination cause variations in electromagnetic wave propagation. The proposed method can detect velocity change using cross-correlation of data traces at different times. An artificially damaged airport taxiway model was measured, and the method captures the positions of damaged parts.

  • Real-Time Experiment and Numerical Analysis of Highly-Survivable Adaptive Restoration for High-Capacity Optical Signal Transmission Open Access

    Hiroki KAWAHARA  Kohei SAITO  Masahiro NAKAGAWA  Takashi KUBO  Takeshi SEKI  Takeshi KAWASAKI  Hideki MAEDA  

     
    PAPER-Transmission Systems and Transmission Equipment for Communications

      Pubricized:
    2020/09/28
      Vol:
    E104-B No:4
      Page(s):
    360-369

    An optical-layer adaptive restoration scheme is validated by a real-time experiment and numerical analyses. In this paper, it is assumed that this scheme can adaptively optimize the bitrate (up to 600Gb/s) and an optical reach with 100Gb/s granularity to maintain high-capacity optical signal transmission. The practicality of 600-Gb/s/carrier optical signal transmission over 101.6-km field-installed fiber is confirmed prior to the adaptive restoration experiment. After modifying the field setup, a real-time experiment on network recovery is demonstrated with bitrate adaptation for 600-Gb/s to 400-Gb/s signals. The results indicate that this scheme can restore failed connections with recovery times comparable to those of conventional restoration scheme; thus 99.9999% system availability can be easily attained even under double-link failures. Numerical analysis clarifies that adaptive restoration can recover >80% of double-link failures on several realistic topologies and improvement amount against conventional scheme is semi-statistically characterized by restoration path length.

  • QoE-Aware Stable Adaptive Video Streaming Using Proportional-Derivative Controller for MPEG-DASH Open Access

    Ryuta SAKAMOTO  Takahiro SHOBUDANI  Ryosuke HOTCHI  Ryogo KUBO  

     
    PAPER-Network

      Pubricized:
    2020/09/24
      Vol:
    E104-B No:3
      Page(s):
    286-294

    In video distribution services such as video streaming, the providers must satisfy the various quality demands of the users. One of the human-centric indexes used to assess video quality is the quality of experience (QoE). In video streaming, the video bitrate, video freezing time, and video bitrate switching are significant determiners of QoE. To provide high-quality video streaming services, adaptive streaming using the Moving Picture Experts Group dynamic adaptive streaming over Hypertext Transfer Protocol (MPEG-DASH) is widely utilized. One of the conventional bitrate selection methods for MPEG-DASH selects the bitrate such that the amount of buffered data in the playback buffer, i.e., the playback buffer level, can be maintained at a constant value. This method can avoid buffer overflow and video freezing based on feedback control; however, this method induces high-frequency video bitrate switching, which can degrade QoE. To overcome this issue, this paper proposes a bitrate selection method in an adaptive video steaming for MPEG-DASH to improve the QoE by minimizing the bitrate fluctuation. To this end, the proposed method does not change the bitrate if the playback buffer level is not around its upper or lower limit, corresponding to the full or empty state of the playback buffer, respectively. In particular, to avoid buffer overflow and video freezing, the proposed method selects the bitrate based on proportional-derivative (PD) control to maintain the playback buffer level at a target level, which corresponds to an upper or lower threshold of the playback buffer level. Simulations confirm that, the proposed method offers better QoE than the conventional method for users with various preferences.

  • A Congestion-Aware Adaptive Streaming over ICN Combined with Explicit Congestion Notification for QoE Improvement

    Rei NAKAGAWA  Satoshi OHZAHATA  Ryo YAMAMOTO  Toshihiko KATO  

     
    PAPER-Information Network

      Pubricized:
    2020/11/02
      Vol:
    E104-D No:2
      Page(s):
    264-274

    Recently, adaptive streaming over information centric network (ICN) has attracted attention. In adaptive streaming over ICN, the bitrate adaptation of the client often overestimates a bitrate for available bandwidth due to congestion because the client implicitly estimates congestion status from the content download procedures of ICN. As a result, streaming overestimated bitrate results in QoE degradation of clients such as cause of a stall time and frequent variation of the bitrate. In this paper, we propose a congestion-aware adaptive streaming over ICN combined with the explicit congestion notification (CAAS with ECN) to avoid QoE degradation. CAAS with ECN encourages explicit feedback of congestion detected in the router on the communication path, and introduces the upper band of the selectable bitrate (bitrate-cap) based on explicit feedback from the router to the bitrate adaptation of the clients. We evaluate the effectiveness of CAAS with ECN for client's QoE degradation due to congestion and behavior on the QoS metrics based on throughput. The simulation experiments show that the bitrate adjustment for all the clients improves QoE degradation and QoE fairness due to effective congestion avoidance.

  • A 26-GHz-Band High Back-Off Efficiency Stacked-FET Power Amplifier IC with Adaptively Controlled Bias and Load Circuits in 45-nm CMOS SOI

    Toshihiko YOSHIMASU  Mengchu FANG  Tsuyoshi SUGIURA  

     
    INVITED PAPER

      Vol:
    E104-A No:2
      Page(s):
    477-483

    This paper presents a 26-GHz-band high back-off efficiency power amplifier (PA) IC with adaptively controlled bias and load circuits in 45-nm CMOS SOI. A 4-stacked-FET is employed to increase the output power and to conquer the low breakdown voltage issue of scaled MOSFET. The adaptive bias circuit is reviewed and the adaptive load circuit which consists of an inverter circuit and transformer-based inductors is described in detail. The measured performance of the PA IC is fully shown in this paper. The PA IC exhibits a saturated output power of 20.5dBm and a peak power-added-efficiency (PAE) as high as 39.4% at a supply voltage of 4.0V. Moreover, the PA IC has exhibited an excellent ITRS FoM of 82.0dB.

  • Data-Aided SMI Algorithm Using Common Correlation Matrix for Adaptive Array Interference Suppression

    Kosuke SHIMA  Kazuki MARUTA  Chang-Jun AHN  

     
    PAPER-Digital Signal Processing

      Vol:
    E104-A No:2
      Page(s):
    404-411

    This paper proposes a novel weight derivation method to improve adaptive array interference suppression performance based on our previously conceived sample matrix inversion algorithm using common correlation matrix (CCM-SMI), by data-aided approach. In recent broadband wireless communication system such as orthogonal frequency division multiplexing (OFDM) which possesses lots of subcarriers, the computation complexity is serious problem when using SMI algorithm to suppress unknown interference. To resolve this problem, CCM based SMI algorithm was previously proposed. It computes the correlation matrix by the received time domain signals before fast Fourier transform (FFT). However, due to the limited number of pilot symbols, the estimated channel state information (CSI) is often incorrect. It leads limited interference suppression performance. In this paper, we newly employ a data-aided channel state estimation. Decision results of received symbols are obtained by CCM-SMI and then fed-back to the channel estimator. It assists improving CSI estimation accuracy. Computer simulation result reveals that our proposal accomplishes better bit error rate (BER) performance in spite of the minimum pilot symbols with a slight additional computation complexity.

  • Robust Adaptive Beamforming Based on the Effective Steering Vector Estimation and Covariance Matrix Reconstruction against Sensor Gain-Phase Errors

    Di YAO  Xin ZHANG  Bin HU  Xiaochuan WU  

     
    LETTER-Digital Signal Processing

      Pubricized:
    2020/06/04
      Vol:
    E103-A No:12
      Page(s):
    1655-1658

    A robust adaptive beamforming algorithm is proposed based on the precise interference-plus-noise covariance matrix reconstruction and steering vector estimation of the desired signal, even existing large gain-phase errors. Firstly, the model of array mismatches is proposed with the first-order Taylor series expansion. Then, an iterative method is designed to jointly estimate calibration coefficients and steering vectors of the desired signal and interferences. Next, the powers of interferences and noise are estimated by solving a quadratic optimization question with the derived closed-form solution. At last, the actual interference-plus-noise covariance matrix can be reconstructed as a weighted sum of the steering vectors and the corresponding powers. Simulation results demonstrate the effectiveness and advancement of the proposed method.

  • Correlation Filter-Based Visual Tracking Using Confidence Map and Adaptive Model

    Zhaoqian TANG  Kaoru ARAKAWA  

     
    PAPER-Vision

      Vol:
    E103-A No:12
      Page(s):
    1512-1519

    Recently, visual trackers based on the framework of kernelized correlation filter (KCF) achieve the robustness and accuracy results. These trackers need to learn information on the object from each frame, thus the state change of the object affects the tracking performances. In order to deal with the state change, we propose a novel KCF tracker using the filter response map, namely a confidence map, and adaptive model. This method firstly takes a skipped scale pool method which utilizes variable window size at every two frames. Secondly, the location of the object is estimated using the combination of the filter response and the similarity of the luminance histogram at multiple points in the confidence map. Moreover, we use the re-detection of the multiple peaks of the confidence map to prevent the target drift and reduce the influence of illumination. Thirdly, the learning rate to obtain the model of the object is adjusted, using the filter response and the similarity of the luminance histogram, considering the state of the object. Experimentally, the proposed tracker (CFCA) achieves outstanding performance for the challenging benchmark sequence (OTB2013 and OTB2015).

  • The LMS-Type Adaptive Filter Based on the Gaussian Model for Controlling the Variances of Coefficients

    Kiyoshi NISHIKAWA  

     
    PAPER-Digital Signal Processing

      Vol:
    E103-A No:12
      Page(s):
    1494-1502

    In this paper, we propose a method which enables us to control the variance of the coefficients of the LMS-type adaptive filters. In the method, each coefficient of the adaptive filter is modeled as an random variable with a Gaussian distribution, and its value is estimated as the mean value of the distribution. Besides, at each time, we check if the updated value exists within the predefined range of distribution. The update of a coefficient will be canceled when its updated value exceeds the range. We propose an implementation method which has similar formula as the Gaussian mixture model (GMM) widely used in signal processing and machine learning. The effectiveness of the proposed method is evaluated by the computer simulations.

  • Revisiting a Nearest Neighbor Method for Shape Classification

    Kazunori IWATA  

     
    PAPER-Pattern Recognition

      Pubricized:
    2020/09/23
      Vol:
    E103-D No:12
      Page(s):
    2649-2658

    The nearest neighbor method is a simple and flexible scheme for the classification of data points in a vector space. It predicts a class label of an unseen data point using a majority rule for the labels of known data points inside a neighborhood of the unseen data point. Because it sometimes achieves good performance even for complicated problems, several derivatives of it have been studied. Among them, the discriminant adaptive nearest neighbor method is particularly worth revisiting to demonstrate its application. The main idea of this method is to adjust the neighbor metric of an unseen data point to the set of known data points before label prediction. It often improves the prediction, provided the neighbor metric is adjusted well. For statistical shape analysis, shape classification attracts attention because it is a vital topic in shape analysis. However, because a shape is generally expressed as a matrix, it is non-trivial to apply the discriminant adaptive nearest neighbor method to shape classification. Thus, in this study, we develop the discriminant adaptive nearest neighbor method to make it slightly more useful in shape classification. To achieve this development, a mixture model and optimization algorithm for shape clustering are incorporated into the method. Furthermore, we describe several helpful techniques for the initial guess of the model parameters in the optimization algorithm. Using several shape datasets, we demonstrated that our method is successful for shape classification.

  • ECG Classification with Multi-Scale Deep Features Based on Adaptive Beat-Segmentation

    Huan SUN  Yuchun GUO  Yishuai CHEN  Bin CHEN  

     
    PAPER

      Pubricized:
    2020/07/01
      Vol:
    E103-B No:12
      Page(s):
    1403-1410

    Recently, the ECG-based diagnosis system based on wearable devices has attracted more and more attention of researchers. Existing studies have achieved high classification accuracy by using deep neural networks (DNNs), but there are still some problems, such as: imprecise heart beat segmentation, inadequate use of medical knowledge, the same treatment of features with different importance. To address these problems, this paper: 1) proposes an adaptive segmenting-reshaping method to acquire abundant useful samples; 2) builds a set of hand-crafted features and deep features on the inner-beat, beat and inter-beat scale by integrating enough medical knowledge. 3) introduced a modified channel attention module (CAM) to augment the significant channels in deep features. Following the Association for Advancement of Medical Instrumentation (AAMI) recommendation, we classified the dataset into four classes and validated our algorithm on the MIT-BIH database. Experiments show that the accuracy of our model reaches 96.94%, a 3.71% increase over that of a state-of-the-art alternative.

  • Heterogeneous-Graph-Based Video Search Reranking Using Topic Relevance

    Soh YOSHIDA  Mitsuji MUNEYASU  Takahiro OGAWA  Miki HASEYAMA  

     
    PAPER-Vision

      Vol:
    E103-A No:12
      Page(s):
    1529-1540

    In this paper, we address the problem of analyzing topics, included in a social video group, to improve the retrieval performance of videos. Unlike previous methods that focused on an individual visual aspect of videos, the proposed method aims to leverage the “mutual reinforcement” of heterogeneous modalities such as tags and users associated with video on the Internet. To represent multiple types of relationships between each heterogeneous modality, the proposed method constructs three subgraphs: user-tag, video-video, and video-tag graphs. We combine the three types of graphs to obtain a heterogeneous graph. Then the extraction of latent features, i.e., topics, becomes feasible by applying graph-based soft clustering to the heterogeneous graph. By estimating the membership of each grouped cluster for each video, the proposed method defines a new video similarity measure. Since the understanding of video content is enhanced by exploiting latent features obtained from different types of data that complement each other, the performance of visual reranking is improved by the proposed method. Results of experiments on a video dataset that consists of YouTube-8M videos show the effectiveness of the proposed method, which achieves a 24.3% improvement in terms of the mean normalized discounted cumulative gain in a search ranking task compared with the baseline method.

  • FF-Control Point Insertion (FF-CPI) to Overcome the Degradation of Fault Detection under Multi-Cycle Test for POST

    Hanan T. Al-AWADHI  Tomoki AONO  Senling WANG  Yoshinobu HIGAMI  Hiroshi TAKAHASHI  Hiroyuki IWATA  Yoichi MAEDA  Jun MATSUSHIMA  

     
    PAPER-Dependable Computing

      Pubricized:
    2020/08/20
      Vol:
    E103-D No:11
      Page(s):
    2289-2301

    Multi-cycle Test looks promising a way to reduce the test application time of POST (Power-on Self-Test) for achieving a targeted high fault coverage specified by ISO26262 for testing automotive devices. In this paper, we first analyze the mechanism of Stuck-at Fault Detection Degradation problem in multi-cycle test. Based on the result of our analysis we propose a novel solution named FF-Control Point Insertion technique (FF-CPI) to achieve the reduction of scan-in patterns by multi-cycle test. The FF-CPI technique modifies the captured values of scan Flip-Flops (FFs) during capture operation by directly reversing the value of partial FFs or loading random vectors. The FF-CPI technique enhances the number of detectable stuck-at faults under the capture patterns. The experimental results of ISCAS89 and ITC99 benchmarks validated the effectiveness of FF-CPI technique in scan-in pattern reduction for POST.

  • A Novel Large-Angle ISAR Imaging Algorithm Based on Dynamic Scattering Model

    Ping LI  Feng ZHOU  Bo ZHAO  Maliang LIU  Huaxi GU  

     
    PAPER-Electromagnetic Theory

      Pubricized:
    2020/04/17
      Vol:
    E103-C No:10
      Page(s):
    524-532

    This paper presents a large-angle imaging algorithm based on a dynamic scattering model for inverse synthetic aperture radar (ISAR). In this way, more information can be presented in an ISAR image than an ordinary RD image. The proposed model describes the scattering characteristics of ISAR target varying with different observation angles. Based on this model, feature points in each sub-image of the ISAR targets are extracted and matched using the scale-invariant feature transform (SIFT) and random sample consensus (RANSAC) algorithms. Using these feature points, high-precision rotation angles are obtained via joint estimation, which makes it possible to achieve a large angle imaging using the back-projection algorithm. Simulation results verifies the validity of the proposed method.

  • 4th Order Moment-Based Linear Prediction for Estimating Ringing Sound of Impulsive Noise in Speech Enhancement Open Access

    Naoto SASAOKA  Eiji AKAMATSU  Arata KAWAMURA  Noboru HAYASAKA  Yoshio ITOH  

     
    LETTER-Digital Signal Processing

      Pubricized:
    2020/04/02
      Vol:
    E103-A No:10
      Page(s):
    1248-1251

    Speech enhancement has been proposed to reduce the impulsive noise whose frequency characteristic is wideband. On the other hand, it is challenging to reduce the ringing sound, which is narrowband in impulsive noise. Therefore, we propose the modeling of the ringing sound and its estimation by a linear predictor (LP). However, it is difficult to estimate the ringing sound only in noisy speech due to the auto-correlation property of speech. The proposed system adopts the 4th order moment-based adaptive algorithm by noticing the difference between the 4th order statistics of speech and impulsive noise. The brief analysis and simulation results show that the proposed system has the potential to reduce ringing sound while keeping the quality of enhanced speech.

  • A 0.6-V Adaptive Voltage Swing Serial Link Transmitter Using Near Threshold Body Bias Control and Jitter Estimation

    Yoshihide KOMATSU  Akinori SHINMYO  Mayuko FUJITA  Tsuyoshi HIRAKI  Kouichi FUKUDA  Noriyuki MIURA  Makoto NAGATA  

     
    PAPER-Electronic Circuits

      Pubricized:
    2020/04/09
      Vol:
    E103-C No:10
      Page(s):
    497-504

    With increasing technology scaling and the use of lower voltages, more research interest is being shown in variability-tolerant analog front end design. In this paper, we describe an adaptive amplitude control transmitter that is operated using differential signaling to reduce the temperature variability effect. It enables low power, low voltage operation by synergy between adaptive amplitude control and Vth temperature variation control. It is suitable for high-speed interface applications, particularly cable interfaces. By installing an aggressor circuit to estimate transmitter jitter and changing its frequency and activation rate, we were able to analyze the effects of the interface block on the input buffer and thence on the entire system. We also report a detailed estimation of the receiver clock-data recovery (CDR) operation for transmitter jitter estimation. These investigations provide suggestions for widening the eye opening of the transmitter.

  • DOA-Based Weighted Spatial Filter Design for Sum and Difference Composite Co-Array

    Sho IWAZAKI  Shogo NAKAMURA  Koichi ICHIGE  

     
    PAPER-Antennas and Propagation

      Pubricized:
    2020/04/21
      Vol:
    E103-B No:10
      Page(s):
    1147-1154

    This paper presents a weighted spatial filter (WSF) design method based on direction of arrival (DOA) estimates for a novel array configuration called a sum and difference composite co-array. A sum and difference composite co-array is basically a combination of sum and difference co-arrays. Our configuration can realize higher degrees of freedom (DOF) with the sum co-array part at a calculation cost lower than those of the other sparse arrays. To further enhance the robustness of our proposed sum and difference composite co-array we design an optimal beam pattern by WSF based on the information of estimated DOAs. Performance of the proposed system and the DOA estimation accuracy of close-impinging waves are evaluated through computer simulations.

  • Feedback Signal Processing that Improves Accuracy of Velocity and Direction of Arrival Estimation for Automotive Radar

    Saki SUSA TANAKA  Akira KITAYAMA  Yukinori AKAMINE  Hiroshi KURODA  

     
    BRIEF PAPER-Microwaves, Millimeter-Waves

      Pubricized:
    2020/04/17
      Vol:
    E103-C No:10
      Page(s):
    543-546

    For automotive millimeter radar, a method using a multi-input multi-output (MIMO) array antenna is essential for high angle resolution with module miniaturization. MIMO enables us to extend an antenna array with virtual antennas, and a large antenna array aperture enables high resolution angle estimation. Time division multiplex (TDM) MIMO, which is a method to generate virtual array antennas, makes it easy to design radar system integrated circuits. However, this method leads to two issues in signal processing; the phase error reduces the accuracy of angle estimation of a moving target, and the maximum detectable velocity decreases in inverse proportion to the number of Tx antennas. We analytically derived this phase error and proposed a method to correct the error. Because the phase error of TDM-MIMO is proportional to the target velocity, accurate estimation of the target velocity is an important issue for phase error correction. However, the decrease of the maximum detectable velocity in TDM-MIMO reduces the accuracy of both velocity estimation and angle estimation. To solve these issues, we propose new signal processing for range-velocity estimation for TDM-MIMO radar. By using the feedback result of the estimated direction of arrival (DoA), we can avoid decreasing the maximum detectable velocity. We explain our method with our simulation results.

121-140hit(1871hit)