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[Keyword] TE(21534hit)

761-780hit(21534hit)

  • Asynchronous Periodic Interference Signals Cancellation in Frequency Domain

    Satoshi DENNO  Yafei HOU  

     
    PAPER-Wireless Communication Technologies

      Pubricized:
    2022/03/24
      Vol:
    E105-B No:9
      Page(s):
    1087-1096

    This paper proposes a novel interference cancellation technique that prevents radio receivers from degrading due to periodic interference signals caused by electromagnetic waves emitted from high power circuits. The proposed technique cancels periodic interference signals in the frequency domain, even if the periodic interference signals drift in the time domain. We propose a drift estimation based on a super resolution technique such as ESPRIT. Moreover, we propose a sequential drift estimation to enhance the drift estimation performance. The proposed technique employs a linear filter based on the minimum mean square error criterion with assistance of the estimated drifts for the interference cancellation. The performance of the proposed technique is confirmed by computer simulation. The proposed technique achieves a gain of more than 40dB at the higher frequency part in the band. The proposed canceler achieves such superior performance, if the parameter sets are carefully selected. The proposed sequential drift estimation relaxes the parameter constraints, and enables the proposed cancellation to achieve the performance upper bound.

  • Resource Efficient Top-K Sorter on FPGA

    Binhao HE  Meiting XUE  Shubiao LIU  Feng YU  Weijie CHEN  

     
    LETTER-Digital Signal Processing

      Pubricized:
    2022/03/02
      Vol:
    E105-A No:9
      Page(s):
    1372-1376

    The top-K sorting is a variant of sorting used heavily in applications such as database management systems. Recently, the use of field programmable gate arrays (FPGAs) to accelerate sorting operation has attracted the interest of researchers. However, existing hardware top-K sorting algorithms are either resource-intensive or of low throughput. In this paper, we present a resource-efficient top-K sorting architecture that is composed of L cascading sorting units, and each sorting unit is composed of P sorting cells. K=PL largest elements are produced when a variable length input sequence is processed. This architecture can operate at a high frequency while consuming fewer resources. The experimental results show that our architecture achieved a maximum 1.2x throughput-to-resource improvement compared to previous studies.

  • Exploring Sensor Modalities to Capture User Behaviors for Reading Detection

    Md. Rabiul ISLAM  Andrew W. VARGO  Motoi IWATA  Masakazu IWAMURA  Koichi KISE  

     
    LETTER-Human-computer Interaction

      Pubricized:
    2022/06/20
      Vol:
    E105-D No:9
      Page(s):
    1629-1633

    Accurately describing user behaviors with appropriate sensors is always important when developing computing cost-effective systems. This paper employs datasets recorded for fine-grained reading detection using the J!NS MEME, an eye-wear device with electrooculography (EOG), accelerometer, and gyroscope sensors. We generate models for all possible combinations of the three sensors and employ self-supervised learning and supervised learning in order to gain an understanding of optimal sensor settings. The results show that only the EOG sensor performs roughly as well as the best performing combination of other sensors. This gives an insight into selecting the appropriate sensors for fine-grained reading detection, enabling cost-effective computation.

  • An Underwater DOA Estimation Method under Unknown Acoustic Velocity with L-Shaped Array for Wide-Band Signals

    Gengxin NING  Yushen LIN  Shenjie JIANG  Jun ZHANG  

     
    PAPER-Digital Signal Processing

      Pubricized:
    2022/03/09
      Vol:
    E105-A No:9
      Page(s):
    1289-1297

    The performance of conventional direction of arrival (DOA) methods is susceptible to the uncertainty of acoustic velocity in the underwater environment. To solve this problem, an underwater DOA estimation method with L-shaped array for wide-band signals under unknown acoustic velocity is proposed in this paper. The proposed method refers to the idea of incoherent signal subspace method and Root-MUSIC to obtain two sets of average roots corresponding to the subarray of the L-shaped array. And the geometric relationship between two vertical linear arrays is employed to derive the expression of DOA estimation with respect to the two average roots. The acoustic velocity variable in the DOA estimation expression can be eliminated in the proposed method. The simulation results demonstrate that the proposed method is more accurate and robust than other methods in an unknown acoustic velocity environment.

  • Joint User Association and Spectrum Allocation in Satellite-Terrestrial Integrated Networks

    Wenjing QIU  Aijun LIU  Chen HAN  Aihong LU  

     
    PAPER-Wireless Communication Technologies

      Pubricized:
    2022/03/15
      Vol:
    E105-B No:9
      Page(s):
    1063-1077

    This paper investigates the joint problem of user association and spectrum allocation in satellite-terrestrial integrated networks (STINs), where a low earth orbit (LEO) satellite access network cooperating with terrestrial networks constitutes a heterogeneous network, which is beneficial in terms of both providing seamless coverage as well as improving the backhaul capacity for the dense network scenario. However, the orbital movement of satellites results in the dynamic change of accessible satellites and the backhaul capacities. Moreover, spectrum sharing may be faced with severe co-channel interferences (CCIs) caused by overlapping coverage of multiple access points (APs). This paper aims to maximize the total sum rate considering the influences of the dynamic feature of STIN, backhaul capacity limitation and interference management. The optimization problem is then decomposed into two subproblems: resource allocation for terrestrial communications and satellite communications, which are both solved by matching algorithms. Finally, simulation results show the effectiveness of our proposed scheme in terms of STIN's sum rate and spectrum efficiency.

  • Altered Fingerprints Detection Based on Deep Feature Fusion

    Chao XU  Yunfeng YAN  Lehangyu YANG  Sheng LI  Guorui FENG  

     
    LETTER-Image Processing and Video Processing

      Pubricized:
    2022/06/13
      Vol:
    E105-D No:9
      Page(s):
    1647-1651

    The altered fingerprints help criminals escape from police and cause great harm to the society. In this letter, an altered fingerprint detection method is proposed. The method is constructed by two deep convolutional neural networks to train the time-domain and frequency-domain features. A spectral attention module is added to connect two networks. After the extraction network, a feature fusion module is then used to exploit relationship of two network features. We make ablation experiments and add the module proposed in some popular architectures. Results show the proposed method can improve the performance of altered fingerprint detection compared with the recent neural networks.

  • MSFF: A Multi-Scale Feature Fusion Network for Surface Defect Detection of Aluminum Profiles

    Lianshan SUN  Jingxue WEI  Hanchao DU  Yongbin ZHANG  Lifeng HE  

     
    LETTER-Image Recognition, Computer Vision

      Pubricized:
    2022/05/30
      Vol:
    E105-D No:9
      Page(s):
    1652-1655

    This paper presents an improved YOLOv3 network, named MSFF-YOLOv3, for precisely detecting variable surface defects of aluminum profiles in practice. First, we introduce a larger prediction scale to provide detailed information for small defect detection; second, we design an efficient attention-guided block to extract more features of defects with less overhead; third, we design a bottom-up pyramid and integrate it with the existing feature pyramid network to construct a twin-tower structure to improve the circulation and fusion of features of different layers. In addition, we employ the K-median algorithm for anchor clustering to speed up the network reasoning. Experimental results showed that the mean average precision of the proposed network MSFF-YOLOv3 is higher than all conventional networks for surface defect detection of aluminum profiles. Moreover, the number of frames processed per second for our proposed MSFF-YOLOv3 could meet real-time requirements.

  • Integral Cryptanalysis on Reduced-Round KASUMI

    Nobuyuki SUGIO  Yasutaka IGARASHI  Sadayuki HONGO  

     
    PAPER-Cryptography and Information Security

      Pubricized:
    2022/04/22
      Vol:
    E105-A No:9
      Page(s):
    1309-1316

    Integral cryptanalysis is one of the most powerful attacks on symmetric key block ciphers. Attackers preliminarily search integral characteristics of a target cipher and use them to perform the key recovery attack. Todo proposed a novel technique named the bit-based division property to find integral characteristics. Xiang et al. extended the Mixed Integer Linear Programming (MILP) method to search integral characteristics of lightweight block ciphers based on the bit-based division property. In this paper, we apply these techniques to the symmetric key block cipher KASUMI which was developed by modifying MISTY1. As a result, we found new 4.5-round characteristics of KASUMI for the first time. We show that 7-round KASUMI is attackable with 263 data and 2120 encryptions.

  • Fast Gated Recurrent Network for Speech Synthesis

    Bima PRIHASTO  Tzu-Chiang TAI  Pao-Chi CHANG  Jia-Ching WANG  

     
    LETTER-Speech and Hearing

      Pubricized:
    2022/06/10
      Vol:
    E105-D No:9
      Page(s):
    1634-1638

    The recurrent neural network (RNN) has been used in audio and speech processing, such as language translation and speech recognition. Although RNN-based architecture can be applied to speech synthesis, the long computing time is still the primary concern. This research proposes a fast gated recurrent neural network, a fast RNN-based architecture, for speech synthesis based on the minimal gated unit (MGU). Our architecture removes the unit state history from some equations in MGU. Our MGU-based architecture is about twice faster, with equally good sound quality than the other MGU-based architectures.

  • Sensitivity Enhanced Edge-Cloud Collaborative Trust Evaluation in Social Internet of Things

    Peng YANG  Yu YANG  Puning ZHANG  Dapeng WU  Ruyan WANG  

     
    PAPER-Network Management/Operation

      Pubricized:
    2022/03/22
      Vol:
    E105-B No:9
      Page(s):
    1053-1062

    The integration of social networking concepts into the Internet of Things has led to the Social Internet of Things (SIoT) paradigm, and trust evaluation is essential to secure interaction in SIoT. In SIoT, when resource-constrained nodes respond to unexpected malicious services and malicious recommendations, the trust assessment is prone to be inaccurate, and the existing architecture has the risk of privacy leakage. An edge-cloud collaborative trust evaluation architecture in SIoT is proposed in this paper. Utilize the resource advantages of the cloud and the edge to complete the trust assessment task collaboratively. An evaluation algorithm of relationship closeness between nodes is designed to evaluate neighbor nodes' reliability in SIoT. A trust computing algorithm with enhanced sensitivity is proposed, considering the fluctuation of trust value and the conflict between trust indicators to enhance the sensitivity of identifying malicious behaviors. Simulation results show that compared with traditional methods, the proposed trust evaluation method can effectively improve the success rate of interaction and reduce the false detection rate when dealing with malicious services and malicious recommendations.

  • An Efficient Resource Shared RISC-V Multicore Architecture

    Md Ashraful ISLAM  Kenji KISE  

     
    PAPER-Computer System

      Pubricized:
    2022/05/27
      Vol:
    E105-D No:9
      Page(s):
    1506-1515

    For the increasing demands of computation, heterogeneous multicore architecture is believed to be a promising solution to fulfill the edge computational requirement. In FPGAs, the heterogeneous multicore is realized as multiple soft processor cores with custom processing elements. Since FPGA is a resource-constrained device, sharing the hardware resources among the soft processor cores can be advantageous. A few research works have focused on the resource sharing between soft processors, but they do not study how much FPGA logic is minimized for a different pipeline processor. This paper proposes the microarchitecture of four, and five stage pipeline processors that enables the sharing of functional units for execution among the multiple cores as well as sharing the BRAM ports. We then investigate the performance and hardware resource utilization for a four-core processor. We find that sharing different functional units can save the LUT usage to 31.7% and DSP usage to 75%. We analyze the performance impact of sharing from the simulation of the Embench benchmark program. Our simulation results indicate that for some cases the sharing improves the performance and for other configurations worst-case performance drop is 16.7%.

  • Moon-or-Sun, Nagareru, and Nurimeizu are NP-Complete

    Chuzo IWAMOTO  Tatsuya IDE  

     
    PAPER-Algorithms and Data Structures

      Pubricized:
    2022/03/01
      Vol:
    E105-A No:9
      Page(s):
    1187-1194

    Moon-or-Sun, Nagareru, and Nurimeizu are Nikoli's pencil puzzles. We study the computational complexity of Moon-or-Sun, Nagareru, and Nurimeizu puzzles. It is shown that deciding whether a given instance of each puzzle has a solution is NP-complete.

  • Highly-Accurate and Real-Time Speech Measurement for Laser Doppler Vibrometers

    Yahui WANG  Wenxi ZHANG  Zhou WU  Xinxin KONG  Yongbiao WANG  Hongxin ZHANG  

     
    PAPER-Speech and Hearing

      Pubricized:
    2022/06/08
      Vol:
    E105-D No:9
      Page(s):
    1568-1580

    Laser Doppler Vibrometers (LDVs) enable the acquisition of remote speech signals by measuring small-scale vibrations around a target. They are now widely used in the fields of information acquisition and national security. However, in remote speech detection, the coherent measurement signal is subject to environmental noise, making detecting and reconstructing speech signals challenging. To improve the detection distance and speech quality, this paper proposes a highly accurate real-time speech measurement method that can reconstruct speech from noisy coherent signals. First, the I/Q demodulation and arctangent phase discrimination are used to extract the phase transformation caused by the acoustic vibration from coherent signals. Then, an innovative smoothness criterion and a novel phase difference-based dynamic bilateral compensation phase unwrapping algorithm are used to remove any ambiguity caused by the arctangent phase discrimination in the previous step. This important innovation results in the highly accurate detection of phase jumps. After this, a further innovation is used to enhance the reconstructed speech by applying an improved waveform-based linear prediction coding method, together with adaptive spectral subtraction. This removes any impulsive or background noise. The accuracy and performance of the proposed method were validated by conducting extensive simulations and comparisons with existing techniques. The results show that the proposed algorithm can significantly improve the measurement of speech and the quality of reconstructed speech signals. The viability of the method was further assessed by undertaking a physical experiment, where LDV equipment was used to measure speech at a distance of 310m in an outdoor environment. The intelligibility rate for the reconstructed speech exceeded 95%, confirming the effectiveness and superiority of the method for long-distance laser speech measurement.

  • Rate-Encoding A/D Converter Based on Spiking Neuron Model with Rectangular Wave Threshold Signal

    Yusuke MATSUOKA  Hiroyuki KAWASAKI  

     
    PAPER-Nonlinear Problems

      Pubricized:
    2022/02/21
      Vol:
    E105-A No:8
      Page(s):
    1101-1109

    This paper proposes and characterizes an A/D converter (ADC) based on a spiking neuron model with a rectangular threshold signal. The neuron repeats an integrate-and-fire process and outputs a superstable spike sequence. The dynamics of this system are closely related to those of rate-encoding ADCs. We propose an ADC system based on the spiking neuron model. We derive a theoretical parameter region in a limited time interval of the digital output sequence. We analyze the conversion characteristics in this region and verify that they retain the monotonic increase and rate encoding of an ADC.

  • On Cryptographic Parameters of Permutation Polynomials of the form xrh(x(2n-1)/d)

    Jaeseong JEONG  Chang Heon KIM  Namhun KOO  Soonhak KWON  Sumin LEE  

     
    PAPER-Cryptography and Information Security

      Pubricized:
    2022/02/22
      Vol:
    E105-A No:8
      Page(s):
    1134-1146

    The differential uniformity, the boomerang uniformity, and the extended Walsh spectrum etc are important parameters to evaluate the security of S (substitution)-box. In this paper, we introduce efficient formulas to compute these cryptographic parameters of permutation polynomials of the form xrh(x(2n-1)/d) over a finite field of q=2n elements, where r is a positive integer and d is a positive divisor of 2n-1. The computational cost of those formulas is proportional to d. We investigate differentially 4-uniform permutation polynomials of the form xrh(x(2n-1)/3) and compute the boomerang spectrum and the extended Walsh spectrum of them using the suggested formulas when 6≤n≤12 is even, where d=3 is the smallest nontrivial d for even n. We also investigate the differential uniformity of some permutation polynomials introduced in some recent papers for the case d=2n/2+1.

  • Ray Tracing Acceleration using Rank Minimization for Radio Map Simulation

    Norisato SUGA  Ryohei SASAKI  

     
    LETTER-Digital Signal Processing

      Pubricized:
    2022/02/22
      Vol:
    E105-A No:8
      Page(s):
    1157-1161

    In this letter, a ray tracing (RT) acceleration method based on rank minimization is proposed. RT is a general tool used to simulate wireless communication environments. However, the simulation is time consuming because of the large number of ray calculations. This letter focuses on radio map interpolation as an acceleration approach. In the conventional methods cannot appropriately estimate short-span variation caused by multipath fading. To overcome the shortage of the conventional methods, we adopt rank minimization based interpolation. A computational simulation using commercial RT software revealed that the interpolation accuracy of the proposed method was higher than those of other radio map interpolation methods and that RT simulation can be accelerated approximate five times faster with the missing rate of 0.8.

  • Multi Feature Fusion Attention Learning for Clothing-Changing Person Re-Identification

    Liwei WANG  Yanduo ZHANG  Tao LU  Wenhua FANG  Yu WANG  

     
    LETTER-Image

      Pubricized:
    2022/01/25
      Vol:
    E105-A No:8
      Page(s):
    1170-1174

    Person re-identification (Re-ID) aims to match the same pedestrain identity images across different camera views. Because pedestrians will change clothes frequently for a relatively long time, while many current methods rely heavily on color appearance information or only focus on the person biometric features, these methods make the performance dropped apparently when it is applied to Clohting-Changing. To relieve this dilemma, we proposed a novel Multi Feature Fusion Attention Network (MFFAN), which learns the fine-grained local features. Then we introduced a Clothing Adaptive Attention (CAA) module, which can integrate multiple granularity features to guide model to learn pedestrain's biometric feature. Meanwhile, in order to fully verify the performance of our method on clothing-changing Re-ID problem, we designed a Clothing Generation Network (CGN), which can generate multiple pictures of the same identity wearing different clothes. Finally, experimental results show that our method exceeds the current best method by over 5% and 6% on the VCcloth and PRCC datasets respectively.

  • Constant Voltage Design Using K-Inverter for Cooperative Inductive Power Transfer Open Access

    Quoc-Trinh VO  Quang-Thang DUONG  Minoru OKADA  

     
    PAPER-Electromagnetic Theory

      Pubricized:
    2022/01/31
      Vol:
    E105-C No:8
      Page(s):
    358-368

    This paper proposes constant voltage design based on K-inverter for cooperative inductive power transfer (IPT) where a nearby receiver picks up power and simultaneously cooperates in relaying the signal toward another distant receiver. In a cooperative IPT system, wireless power is fundamentally transferred to the nearby receiver via one K-inverter and to the distant receiver via two K-inverters. By adding one more K-inverter to the nearby receiver, our design is among the simplest methods as it delivers constant output voltage to each receiver via two K-inverters only. Experimental results verify that the proposed cooperative IPT system can stabilize two output voltages against the load variations while attaining high RF-RF efficiency of 90%.

  • Diabetes Noninvasive Recognition via Improved Capsule Network

    Cunlei WANG  Donghui LI  

     
    PAPER-Image Recognition, Computer Vision

      Pubricized:
    2022/05/06
      Vol:
    E105-D No:8
      Page(s):
    1464-1471

    Noninvasive recognition is an important trend in diabetes recognition. Unfortunately, the accuracy obtained from the conventional noninvasive recognition methods is low. This paper proposes a novel Diabetes Noninvasive Recognition method via the plantar pressure image and improved Capsule Network (DNR-CapsNet). The input of the proposed method is a plantar pressure image, and the output is the recognition result: healthy or possibly diabetes. The ResNet18 is used as the backbone of the convolutional layers to convert pixel intensities to local features in the proposed DNR-CapsNet. Then, the PrimaryCaps layer, SecondaryCaps layer, and DiabetesCaps layer are developed to achieve the diabetes recognition. The semantic fusion and locality-constrained dynamic routing are also developed to further improve the recognition accuracy in our method. The experimental results indicate that the proposed method has a better performance on diabetes noninvasive recognition than the state-of-the-art methods.

  • Mach-Zehnder Optical Modulator Integrated with Tunable Multimode Interference Coupler of Ti:LiNbO3 Waveguides for Controlling Modulation Extinction Ratio

    Anna HIRAI  Yuichi MATSUMOTO  Takanori SATO  Tadashi KAWAI  Akira ENOKIHARA  Shinya NAKAJIMA  Atsushi KANNO  Naokatsu YAMAMOTO  

     
    BRIEF PAPER-Lasers, Quantum Electronics

      Pubricized:
    2022/02/16
      Vol:
    E105-C No:8
      Page(s):
    385-388

    A Mach-Zehnder optical modulator with the tunable multimode interference coupler was fabricated using Ti-diffused LiNbO3. The modulation extinction ratio could be voltage controlled to maximize up to 50 dB by tuning the coupler. Optical single-sideband modulation was also achieved with a sideband suppression ratio of more than 30 dB.

761-780hit(21534hit)