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1581-1600hit(42807hit)

  • Sensor Scheduling-Based Detection of False Data Injection Attacks in Power System State Estimation

    Sho OBATA  Koichi KOBAYASHI  Yuh YAMASHITA  

     
    LETTER-Mathematical Systems Science

      Pubricized:
    2021/12/13
      Vol:
    E105-A No:6
      Page(s):
    1015-1019

    In the state estimation of steady-state power networks, a cyber attack that cannot be detected from the residual (i.e., the estimation error) is called a false data injection (FDI) attack. In this letter, to enforce the security of power networks, we propose a method of detecting an FDI attack. In the proposed method, an FDI attack is detected by randomly choosing sensors used in the state estimation. The effectiveness of the proposed method is presented by two examples including the IEEE 14-bus system.

  • Analyses of Transient Energy Deposition in Biological Bodies Exposed to Electromagnetic Pulses Using Parameter Extraction Method Open Access

    Jerdvisanop CHAKAROTHAI  Katsumi FUJII  Yukihisa SUZUKI  Jun SHIBAYAMA  Kanako WAKE  

     
    INVITED PAPER

      Pubricized:
    2021/12/29
      Vol:
    E105-B No:6
      Page(s):
    694-706

    In this study, we develop a numerical method for determining transient energy deposition in biological bodies exposed to electromagnetic (EM) pulses. We use a newly developed frequency-dependent finite-difference time-domain (FD2TD) method, which is combined with the fast inverse Laplace transform (FILT) and Prony method. The FILT and Prony method are utilized to transform the Cole-Cole model of biological media into a sum of multiple Debye relaxation terms. Parameters of Debye terms are then extracted by comparison with the time-domain impulse responses. The extracted parameters are used in an FDTD formulation, which is derived using the auxiliary differential equation method, and transient energy deposition into a biological medium is calculated by the equivalent circuit method. The validity of our proposed method is demonstrated by comparing numerical results and those derived from an analytical method. Finally, transient energy deposition into human heads of TARO and HANAKO models is then calculated using the proposed method and, physical insights into pulse exposures of the human heads are provided.

  • Data Augmented Incremental Learning (DAIL) for Unsupervised Data

    Sathya MADHUSUDHANAN  Suresh JAGANATHAN  

     
    PAPER-Artificial Intelligence, Data Mining

      Pubricized:
    2022/03/14
      Vol:
    E105-D No:6
      Page(s):
    1185-1195

    Incremental Learning, a machine learning methodology, trains the continuously arriving input data and extends the model's knowledge. When it comes to unlabeled data streams, incremental learning task becomes more challenging. Our newly proposed incremental learning methodology, Data Augmented Incremental Learning (DAIL), learns the ever-increasing real-time streams with reduced memory resources and time. Initially, the unlabeled batches of data streams are clustered using the proposed clustering algorithm, Clustering based on Autoencoder and Gaussian Model (CLAG). Later, DAIL creates an updated incremental model for the labelled clusters using data augmentation. DAIL avoids the retraining of old samples and retains only the most recently updated incremental model holding all old class information. The use of data augmentation in DAIL combines the similar clusters generated with different data batches. A series of experiments verified the significant performance of CLAG and DAIL, producing scalable and efficient incremental model.

  • Improvement of Port-to-Port Isolation Characteristics of a Linearly Dual-Polarized Dual-Band and Wideband Multi-Ring Microstrip Antenna Fed by Two L-Probes with a Via

    Yuki KIMURA  Sakuyoshi SAITO  Yuichi KIMURA  Masahiro TATEMATSU  

     
    PAPER-Antennas

      Pubricized:
    2021/12/17
      Vol:
    E105-B No:6
      Page(s):
    715-721

    This paper presents improvement of port-to-port isolation characteristics of a linearly dual-polarized dual-band and wideband multi-ring microstrip antenna (MR-MSA) fed by two L-probes. The linearly dual-polarized dual-band and wideband MR-MSA consists of two circular ring patches and two L-probes arranged in a multi-layered dielectric substrate. By using a thick substrate for the L-probe and arranging two ring patches as radiation elements, the proposed antenna operates wideband and dual-band characteristics. Furthermore, by arranging two L-probes at the orthogonal positions, the proposed antenna can radiate dual linear polarizations. In this paper, for improving port-to-port isolation characteristics of the linearly dual-polarized dual-band and wideband MR-MSA fed by two L-probes, a via connected to the ground plane at the center of the radiation elements is arranged. The fractional bandwidths below -10dB reflection obtained by the simulation of the MR-MSA with the via were 17.0% and 14.4%. Furthermore, the simulated isolation characteristics were more than 21.0dB and 17.0dB in the two bands. Improvement of the isolation characteristics between two ports as well as the dual-band and wideband performance of the proposed MR-MSA with the via were confirmed by the simulation and the measurement.

  • Path Loss Prediction Method Merged Conventional Models Effectively in Machine Learning for Mobile Communications

    Hiroaki NAKABAYASHI  Kiyoaki ITOI  

     
    PAPER-Propagation

      Pubricized:
    2021/12/14
      Vol:
    E105-B No:6
      Page(s):
    737-747

    Basic characteristics for relating design and base station layout design in land mobile communications are provided through a propagation model for path loss prediction. Owing to the rapid annual increase in traffic data, the number of base stations has increased accordingly. Therefore, propagation models for various scenarios and frequency bands are necessitated. To solve problems optimization and creation methods using the propagation model, a path loss prediction method that merges multiple models in machine learning is proposed herein. The method is discussed based on measurement values from Kitakyushu-shi. In machine learning, the selection of input parameters and suppression of overlearning are important for achieving highly accurate predictions. Therefore, the acquisition of conventional models based on the propagation environment and the use of input parameters of high importance are proposed. The prediction accuracy for Kitakyushu-shi using the proposed method indicates a root mean square error (RMSE) of 3.68dB. In addition, predictions are performed in Narashino-shi to confirm the effectiveness of the method in other urban scenarios. Results confirm the effectiveness of the proposed method for the urban scenario in Narashino-shi, and an RMSE of 4.39dB is obtained for the accuracy.

  • Accurate Source-Number Estimation Using Denoising Preprocessing and Singular Value Decomposition

    Shohei HAMADA  Koichi ICHIGE  Katsuhisa KASHIWAGI  Nobuya ARAKAWA  Ryo SAITO  

     
    PAPER-DOA Estimation

      Pubricized:
    2021/12/03
      Vol:
    E105-B No:6
      Page(s):
    766-774

    This paper proposes two accurate source-number estimation methods for array antennas and multi-input multi-output radar. Direction of arrival (DOA) estimation is important in high-speed wireless communication and radar imaging. Most representative DOA estimation methods require the source-number information in advance and often fail to estimate DOAs in severe environments such as those having low signal-to-noise ratio or large transmission-power difference. Received signals are often bandlimited or narrowband signals, so the proposed methods first involves denoising preprocessing by removing undesired components then comparing the original and denoised signal information. The performances of the proposed methods were evaluated through computer simulations.

  • 32-Bit ALU with Clockless Gates for RSFQ Bit-Parallel Processor Open Access

    Takahiro KAWAGUCHI  Naofumi TAKAGI  

     
    INVITED PAPER

      Pubricized:
    2021/12/03
      Vol:
    E105-C No:6
      Page(s):
    245-250

    A 32-bit arithmetic logic unit (ALU) is designed for a rapid single flux quantum (RSFQ) bit-parallel processor. In the ALU, clocked gates are partially replaced by clockless gates. This reduces the number of D flip flops (DFFs) required for path balancing. The number of clocked gates, including DFFs, is reduced by approximately 40 %, and size of the clock distribution network is reduced. The number of pipeline stages becomes modest. The layout design of the ALU and simulation results show the effectiveness of using clockless gates in wide datapath circuits.

  • Adiabatic Quantum-Flux-Parametron: A Tutorial Review Open Access

    Naoki TAKEUCHI  Taiki YAMAE  Christopher L. AYALA  Hideo SUZUKI  Nobuyuki YOSHIKAWA  

     
    INVITED PAPER

      Pubricized:
    2022/01/19
      Vol:
    E105-C No:6
      Page(s):
    251-263

    The adiabatic quantum-flux-parametron (AQFP) is an energy-efficient superconductor logic element based on the quantum flux parametron. AQFP circuits can operate with energy dissipation near the thermodynamic and quantum limits by maximizing the energy efficiency of adiabatic switching. We have established the design methodology for AQFP logic and developed various energy-efficient systems using AQFP logic, such as a low-power microprocessor, reversible computer, single-photon image sensor, and stochastic electronics. We have thus demonstrated the feasibility of the wide application of AQFP logic in future information and communications technology. In this paper, we present a tutorial review on AQFP logic to provide insights into AQFP circuit technology as an introduction to this research field. We describe the historical background, operating principle, design methodology, and recent progress of AQFP logic.

  • A High-Speed Interface Based on a Josephson Latching Driver for Adiabatic Quantum-Flux-Parametron Logic

    Fumihiro CHINA  Naoki TAKEUCHI  Hideo SUZUKI  Yuki YAMANASHI  Hirotaka TERAI  Nobuyuki YOSHIKAWA  

     
    PAPER

      Pubricized:
    2021/12/03
      Vol:
    E105-C No:6
      Page(s):
    264-269

    The adiabatic quantum flux parametron (AQFP) is an energy-efficient, high-speed superconducting logic device. To observe the tiny output currents from the AQFP in experiments, high-speed voltage drivers are indispensable. In the present study, we develop a compact voltage driver for AQFP logic based on a Josephson latching driver (JLD), which has been used as a high-speed driver for rapid single-flux-quantum (RSFQ) logic. In the JLD-based voltage driver, the signal currents of AQFP gates are converted into gap-voltage-level signals via an AQFP/RSFQ interface and a four-junction logic gate. Furthermore, this voltage driver includes only 15 Josephson junctions, which is much fewer than in the case for the previously designed driver based on dc superconducting quantum interference devices (60 junctions). In measurement, we successfully operate the JLD-based voltage driver up to 4 GHz. We also evaluate the bit error rate (BER) of the driver and find that the BER is 7.92×10-10 and 2.67×10-3 at 1GHz and 4GHz, respectively.

  • An Attention Nested U-Structure Suitable for Salient Ship Detection in Complex Maritime Environment

    Weina ZHOU  Ying ZHOU  Xiaoyang ZENG  

     
    PAPER-Information Network

      Pubricized:
    2022/03/23
      Vol:
    E105-D No:6
      Page(s):
    1164-1171

    Salient ship detection plays an important role in ensuring the safety of maritime transportation and navigation. However, due to the influence of waves, special weather, and illumination on the sea, existing saliency methods are still unable to achieve effective ship detection in a complex marine environment. To solve the problem, this paper proposed a novel saliency method based on an attention nested U-Structure (AU2Net). First, to make up for the shortcomings of the U-shaped structure, the pyramid pooling module (PPM) and global guidance paths (GGPs) are designed to guide the restoration of feature information. Then, the attention modules are added to the nested U-shaped structure to further refine the target characteristics. Ultimately, multi-level features and global context features are integrated through the feature aggregation module (FAM) to improve the ability to locate targets. Experiment results demonstrate that the proposed method could have at most 36.75% improvement in F-measure (Favg) compared to the other state-of-the-art methods.

  • Adiabatic Quantum-Flux-Parametron with Delay-Line Clocking Using Square Excitation Currents

    Taiki YAMAE  Naoki TAKEUCHI  Nobuyuki YOSHIKAWA  

     
    PAPER

      Pubricized:
    2022/01/19
      Vol:
    E105-C No:6
      Page(s):
    277-282

    The adiabatic quantum-flux-parametron (AQFP) is an energy-efficient superconductor logic device. In a previous study, we proposed a low-latency clocking scheme called delay-line clocking, and several low-latency AQFP logic gates have been demonstrated. In delay-line clocking, the latency between adjacent excitation phases is determined by the propagation delay of excitation currents, and thus the rising time of excitation currents should be sufficiently small; otherwise, an AQFP gate can switch before the previous gate is fully excited. This means that delay-line clocking needs high clock frequencies, because typical excitation currents are sinusoidal and the rising time depends on the frequency. However, AQFP circuits need to be tested in a wide frequency range experimentally. Hence, in the present study, we investigate AQFP circuits adopting delay-line clocking with square excitation currents to apply delay-line clocking in a low frequency range. Square excitation currents have shorter rising time than sinusoidal excitation currents and thus enable low frequency operation. We demonstrate an AQFP buffer chain with delay-line clocking using square excitation currents, in which the latency is approximately 20ps per gate, and confirm that the operating margin for the buffer chain is kept sufficiently wide at clock frequencies below 1GHz, whereas in the sinusoidal case the operating margin shrinks below 500MHz. These results indicate that AQFP circuits adopting delay-line clocking can operate in a low frequency range by using square excitation currents.

  • Development of Quantum Annealer Using Josephson Parametric Oscillators Open Access

    Tomohiro YAMAJI  Masayuki SHIRANE  Tsuyoshi YAMAMOTO  

     
    INVITED PAPER

      Pubricized:
    2021/12/03
      Vol:
    E105-C No:6
      Page(s):
    283-289

    A Josephson parametric oscillator (JPO) is an interesting system from the viewpoint of quantum optics because it has two stable self-oscillating states and can deterministically generate quantum cat states. A theoretical proposal has been made to operate a network of multiple JPOs as a quantum annealer, which can solve adiabatically combinatorial optimization problems at high speed. Proof-of-concept experiments have been actively conducted for application to quantum computations. This article provides a review of the mechanism of JPOs and their application as a quantum annealer.

  • Evaluation of a True Random Number Generator Utilizing Timing Jitters in RSFQ Logic Circuits Open Access

    Kenta SATO  Naonori SEGA  Yuta SOMEI  Hiroshi SHIMADA  Takeshi ONOMI  Yoshinao MIZUGAKI  

     
    BRIEF PAPER

      Pubricized:
    2022/01/19
      Vol:
    E105-C No:6
      Page(s):
    296-299

    We experimentally evaluated random number sequences generated by a superconducting hardware random number generator composed of a Josephson-junction oscillator, a rapid-single-flux-quantum (RSFQ) toggle flip-flop (TFF), and an RSFQ AND gate. Test circuits were fabricated using a 10 kA/cm2 Nb/AlOx/Nb integration process. Measurements were conducted in a liquid helium bath. The random numbers were generated for a trigger frequency of 500 kHz under the oscillating Josephson-junction at 29 GHz. 26 random number sequences of 20 kb length were evaluated for bias voltages between 2.0 and 2.7 mV. The NIST FIPS PUBS 140-2 tests were used for the evaluation. 100% pass rates were confirmed at the bias voltages of 2.5 and 2.6 mV. We found that the Monobit test limited the pass rates. As numerical simulations suggested, a detailed evaluation for the probability of obtaining “1” demonstrated the monotonical dependence on the bias voltage.

  • A Conflict-Aware Capacity Control Mechanism for Deep Cache Hierarchy

    Jiaheng LIU  Ryusuke EGAWA  Hiroyuki TAKIZAWA  

     
    PAPER-Computer System

      Pubricized:
    2022/03/09
      Vol:
    E105-D No:6
      Page(s):
    1150-1163

    As the number of cores on a processor increases, cache hierarchies contain more cache levels and a larger last level cache (LLC). Thus, the power and energy consumption of the cache hierarchy becomes non-negligible. Meanwhile, because the cache usage behaviors of individual applications can be different, it is possible to achieve higher energy efficiency of the computing system by determining the appropriate cache configurations for individual applications. This paper proposes a cache control mechanism to improve energy efficiency by adjusting a cache hierarchy to each application. Our mechanism first bypasses and disables a less-significant cache level, then partially disables the LLC, and finally adjusts the associativity if it suffers from a large number of conflict misses. The mechanism can achieve significant energy saving at the sacrifice of small performance degradation. The evaluation results show that our mechanism improves energy efficiency by 23.9% and 7.0% on average over the baseline and the cache-level bypassing mechanisms, respectively. In addition, even if the LLC resource contention occurs, the proposed mechanism is still effective for improving energy efficiency.

  • INmfCA Algorithm for Training of Nonparallel Voice Conversion Systems Based on Non-Negative Matrix Factorization

    Hitoshi SUDA  Gaku KOTANI  Daisuke SAITO  

     
    PAPER-Speech and Hearing

      Pubricized:
    2022/03/03
      Vol:
    E105-D No:6
      Page(s):
    1196-1210

    In this paper, we propose a new training framework named the INmfCA algorithm for nonparallel voice conversion (VC) systems. To train conversion models, traditional VC frameworks require parallel corpora, in which source and target speakers utter the same linguistic contents. Although the frameworks have achieved high-quality VC, they are not applicable in situations where parallel corpora are unavailable. To acquire conversion models without parallel corpora, nonparallel methods are widely studied. Although the frameworks achieve VC under nonparallel conditions, they tend to require huge background knowledge or many training utterances. This is because of difficulty in disentangling linguistic and speaker information without a large amount of data. In this work, we tackle this problem by exploiting NMF, which can factorize acoustic features into time-variant and time-invariant components in an unsupervised manner. The method acquires alignment between the acoustic features of a source speaker's utterances and a target dictionary and uses the obtained alignment as activation of NMF to train the source speaker's dictionary without parallel corpora. The acquisition method is based on the INCA algorithm, which obtains the alignment of nonparallel corpora. In contrast to the INCA algorithm, the alignment is not restricted to observed samples, and thus the proposed method can efficiently utilize small nonparallel corpora. The results of subjective experiments show that the combination of the proposed algorithm and the INCA algorithm outperformed not only an INCA-based nonparallel framework but also CycleGAN-VC, which performs nonparallel VC without any additional training data. The results also indicate that a one-shot VC framework, which does not need to train source speakers, can be constructed on the basis of the proposed method.

  • Depth Image Noise Reduction and Super-Resolution by Pixel-Wise Multi-Frame Fusion

    Masahiro MURAYAMA  Toyohiro HIGASHIYAMA  Yuki HARAZONO  Hirotake ISHII  Hiroshi SHIMODA  Shinobu OKIDO  Yasuyoshi TARUTA  

     
    PAPER-Image Processing and Video Processing

      Pubricized:
    2022/03/04
      Vol:
    E105-D No:6
      Page(s):
    1211-1224

    High-quality depth images are required for stable and accurate computer vision. Depth images captured by depth cameras tend to be noisy, incomplete, and of low-resolution. Therefore, increasing the accuracy and resolution of depth images is desirable. We propose a method for reducing the noise and holes from depth images pixel by pixel, and increasing resolution. For each pixel in the target image, the linear space from the focal point of the camera through each pixel to the existing object is divided into equally spaced grids. In each grid, the difference from each grid to the object surface is obtained from multiple tracked depth images, which have noisy depth values of the respective image pixels. Then, the coordinates of the correct object surface are obtainable by reducing the depth random noise. The missing values are completed. The resolution can also be increased by creating new pixels between existing pixels and by then using the same process as that used for noise reduction. Evaluation results have demonstrated that the proposed method can do processing with less GPU memory. Furthermore, the proposed method was able to reduce noise more accurately, especially around edges, and was able to process more details of objects than the conventional method. The super-resolution of the proposed method also produced a high-resolution depth image with smoother and more accurate edges than the conventional methods.

  • Reinforced Tracker Based on Hierarchical Convolutional Features

    Xin ZENG  Lin ZHANG  Zhongqiang LUO  Xingzhong XIONG  Chengjie LI  

     
    PAPER-Image Processing and Video Processing

      Pubricized:
    2022/03/10
      Vol:
    E105-D No:6
      Page(s):
    1225-1233

    In recent years, the development of visual tracking is getting better and better, but some methods cannot overcome the problem of low accuracy and success rate of tracking. Although there are some trackers will be more accurate, they will cost more time. In order to solve the problem, we propose a reinforced tracker based on Hierarchical Convolutional Features (HCF for short). HOG, color-naming and grayscale features are used with different weights to supplement the convolution features, which can enhance the tracking robustness. At the same time, we improved the model update strategy to save the time costs. This tracker is called RHCF and the code is published on https://github.com/z15846/RHCF. Experiments on the OTB2013 dataset show that our tracker can validly achieve the promotion of the accuracy and success rate.

  • Facial Recognition of Dairy Cattle Based on Improved Convolutional Neural Network

    Zhi WENG  Longzhen FAN  Yong ZHANG  Zhiqiang ZHENG  Caili GONG  Zhongyue WEI  

     
    PAPER-Image Processing and Video Processing

      Pubricized:
    2022/03/02
      Vol:
    E105-D No:6
      Page(s):
    1234-1238

    As the basis of fine breeding management and animal husbandry insurance, individual recognition of dairy cattle is an important issue in the animal husbandry management field. Due to the limitations of the traditional method of cow identification, such as being easy to drop and falsify, it can no longer meet the needs of modern intelligent pasture management. In recent years, with the rise of computer vision technology, deep learning has developed rapidly in the field of face recognition. The recognition accuracy has surpassed the level of human face recognition and has been widely used in the production environment. However, research on the facial recognition of large livestock, such as dairy cattle, needs to be developed and improved. According to the idea of a residual network, an improved convolutional neural network (Res_5_2Net) method for individual dairy cow recognition is proposed based on dairy cow facial images in this letter. The recognition accuracy on our self-built cow face database (3012 training sets, 1536 test sets) can reach 94.53%. The experimental results show that the efficiency of identification of dairy cows is effectively improved.

  • Detection of Trust Shilling Attacks in Recommender Systems

    Xian CHEN  Xi DENG  Chensen HUANG  Hyoseop SHIN  

     
    LETTER-Data Engineering, Web Information Systems

      Pubricized:
    2022/03/02
      Vol:
    E105-D No:6
      Page(s):
    1239-1242

    Most research on detecting shilling attacks focuses on users' rating behavior but does not consider that attackers may also attack the users' trusting behavior. For example, attackers may give a low score to other users' ratings so that people would think the ratings from the users are not helpful. In this paper, we define the trust shilling attack, propose the behavior features of trust attacks, and present an effective detection method using machine learning methods. The experimental results demonstrate that, based on our proposed behavior features of trust attacks, we can detect trust shilling attacks as well as traditional shilling attacks accurately.

  • Single-Image Camera Calibration for Furniture Layout Using Natural-Marker-Based Augmented Reality

    Kazumoto TANAKA  Yunchuan ZHANG  

     
    LETTER-Multimedia Pattern Processing

      Pubricized:
    2022/03/09
      Vol:
    E105-D No:6
      Page(s):
    1243-1248

    We propose an augmented-reality-based method for arranging furniture using natural markers extracted from the edges of the walls of rooms. The proposed method extracts natural markers and estimates the camera parameters from single images of rooms using deep neural networks. Experimental results show that in all the measurements, the superimposition error of the proposed method was lower than that of general marker-based methods that use practical-sized markers.

1581-1600hit(42807hit)