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2221-2240hit(20498hit)

  • Wide-Sense Nonblocking W-S-W Node Architectures for Elastic Optical Networks

    Wojciech KABACIŃSKI  Mustafa ABDULSAHIB  Marek MICHALSKI  

     
    PAPER

      Pubricized:
    2018/11/22
      Vol:
    E102-B No:5
      Page(s):
    978-991

    This paper considers wide-sense nonblocking operation of the Wavelength-Space-Wavelength elastic optical switch. Six control algorithms, based on functional spectrum decomposition in interstage links and functional decomposition of center stage switches, are proposed for two switching fabric architectures. For these algorithms we derived wide-sense nonblocking conditions and compared them with strict-sense nonblocking ones. The results show that the proposed algorithm reduces the required number of frequency slot units (FSUs) or center stage switches, depending on the switching fabric architecture. Savings occur even when connections use small number of frequency slot units.

  • 2-D DOA Estimation Based on Sparse Bayesian Learning for L-Shaped Nested Array

    Lu CHEN  Daping BI  Jifei PAN  

     
    PAPER-Fundamental Theories for Communications

      Pubricized:
    2018/10/23
      Vol:
    E102-B No:5
      Page(s):
    992-999

    In sparsity-based optimization problems for two dimensional (2-D) direction-of-arrival (DOA) estimation using L-shaped nested arrays, one of the major issues is computational complexity. A 2-D DOA estimation algorithm is proposed based on reconsitution sparse Bayesian learning (RSBL) and cross covariance matrix decomposition. A single measurement vector (SMV) model is obtained by the difference coarray corresponding to one-dimensional nested array. Through spatial smoothing, the signal measurement vector is transformed into a multiple measurement vector (MMV) matrix. The signal matrix is separated by singular values decomposition (SVD) of the matrix. Using this method, the dimensionality of the sensing matrix and data size can be reduced. The sparse Bayesian learning algorithm is used to estimate one-dimensional angles. By using the one-dimensional angle estimations, the steering vector matrix is reconstructed. The cross covariance matrix of two dimensions is decomposed and transformed. Then the closed expression of the steering vector matrix of another dimension is derived, and the angles are estimated. Automatic pairing can be achieved in two dimensions. Through the proposed algorithm, the 2-D search problem is transformed into a one-dimensional search problem and a matrix transformation problem. Simulations show that the proposed algorithm has better angle estimation accuracy than the traditional two-dimensional direction finding algorithm at low signal-to-noise ratio and few samples.

  • Bit-Error-Rate Degradation Due to Inter-Channel Crosstalk of Different Signal Format

    Naruki SHINOHARA  Koji IGARASHI  Kyo INOUE  

     
    PAPER-Transmission Systems and Transmission Equipment for Communications

      Pubricized:
    2018/10/26
      Vol:
    E102-B No:5
      Page(s):
    1000-1004

    Inter-channel crosstalk is one of the crucial issues in multichannel optical systems. Conventional studies assume that the crosstalk and the main signals have identical format. The present study, in contrast, considers different signal formats for the main and crosstalk lights, and shows that bit error degradation is different depending on the modulation format. Statistical properties of the crosstalk are also investigated. The result quantitatively confirms that a crosstalk light whose signal distribution is closer to a Gaussian profile causes larger degradation.

  • Scalability Analysis of Deeply Pipelined Tsunami Simulation with Multiple FPGAs Open Access

    Antoniette MONDIGO  Tomohiro UENO  Kentaro SANO  Hiroyuki TAKIZAWA  

     
    PAPER-Applications

      Pubricized:
    2019/02/05
      Vol:
    E102-D No:5
      Page(s):
    1029-1036

    Since the hardware resource of a single FPGA is limited, one idea to scale the performance of FPGA-based HPC applications is to expand the design space with multiple FPGAs. This paper presents a scalable architecture of a deeply pipelined stream computing platform, where available parallelism and inter-FPGA link characteristics are investigated to achieve a scaled performance. For a practical exploration of this vast design space, a performance model is presented and verified with the evaluation of a tsunami simulation application implemented on Intel Arria 10 FPGAs. Finally, scalability analysis is performed, where speedup is achieved when increasing the computing pipeline over multiple FPGAs while maintaining the problem size of computation. Performance is scaled with multiple FPGAs; however, performance degradation occurs with insufficient available bandwidth and large pipeline overhead brought by inadequate data stream size. Tsunami simulation results show that the highest scaled performance for 8 cascaded Arria 10 FPGAs is achieved with a single pipeline of 5 stream processing elements (SPEs), which obtained a scaled performance of 2.5 TFlops and a parallel efficiency of 98%, indicating the strong scalability of the multi-FPGA stream computing platform.

  • Sum Throughput Maximization for MIMO Wireless Powered Communication Networks with Discrete Signal Inputs

    Feng KE  Xiaoyu HUANG  Weiliang ZENG  Yuqin LIU  

     
    PAPER-Wireless Communication Technologies

      Pubricized:
    2018/10/26
      Vol:
    E102-B No:5
      Page(s):
    1037-1044

    Wireless powered communication networks (WPCNs) utilize the wireless energy transfer (WET) technique to facilitate the wireless information transmission (WIT) of nodes. We propose a two-step iterative algorithm to maximize the sum throughput of the users in a MIMO WPCN with discrete signal inputs. Firstly, the optimal solution of a convex power allocation problem can be found given a fixed time allocation; Secondly, a semi closed form solution for the optimal time allocation is obtained when fixing the power allocation matrix. By optimizing the power allocation and time allocation alternately, the two-step algorithm converges to a local optimal point. Simulation results show that the proposed algorithm outperforms the conventional schemes, which consider only Gaussian inputs.

  • Optimal Power Allocation for Low Complexity Channel Estimation and Symbol Detection Using Superimposed Training

    Qingbo WANG  Gaoqi DOU  Jun GAO  Xianwen HE  

     
    PAPER-Wireless Communication Technologies

      Pubricized:
    2018/10/26
      Vol:
    E102-B No:5
      Page(s):
    1027-1036

    A low complexity channel estimation scheme using data-dependent superimposed training (DDST) is proposed in this paper, where the pilots are inserted in more than one block, rather than the single block of the original DDST. Comparing with the original DDST (which improves the performance of channel estimation at the cost of huge computational overheads), the proposed DDST scheme improves the performance of channel estimation with only a slight increase in the consumption of computation resources. The optimal precoder is designed to minimize the data distortion caused by the rank-deficient precoding. The optimal pilots and placement are also provided to improve the performance of channel estimation. In addition, the impact of power allocation between the data and pilots on symbol detection is analyzed, the optimal power allocation scheme is derived to maximize the effective signal-to-noise ratio at the receiver. Simulation results are presented to show the computational advantage of the proposed scheme, and the advantages of the optimal pilots and power allocation scheme.

  • Efficient Hybrid DOA Estimation for Massive Uniform Linear Array

    Wei JHANG  Shiaw-Wu CHEN  Ann-Chen CHANG  

     
    LETTER-Digital Signal Processing

      Vol:
    E102-A No:5
      Page(s):
    721-724

    This letter presents an efficient hybrid direction of arrival (DOA) estimation scheme for massive uniform linear array. In this scheme, the DOA estimator based on a discrete Fourier transform (DFT) is first applied to acquire coarse initial DOA estimates for single data snapshot. And then, the fine DOA is accurately estimated through using the iterative search estimator within a very small region. It iteratively searches for correct DOA vector by minimizing the objective function using a Taylor series approximation of the DOA vector with the one initially estimated. Since the proposed scheme does not need to perform eigen-decomposition and spectrum search while maintaining better DOA estimates, it also has low complexity and real-time capability. Simulation results are presented to demonstrate the efficiency of the proposed scheme.

  • A Family of Counterexamples to the Central Limit Theorem Based on Binary Linear Codes Open Access

    Keigo TAKEUCHI  

     
    LETTER-Coding Theory

      Vol:
    E102-A No:5
      Page(s):
    738-740

    The central limit theorem (CLT) claims that the standardized sum of a random sequence converges in distribution to a normal random variable as the length tends to infinity. We prove the existence of a family of counterexamples to the CLT for d-tuplewise independent sequences of length n for all d=2,...,n-1. The proof is based on [n, k, d+1] binary linear codes. Our result implies that d-tuplewise independence is too weak to justify the CLT, even if the size d grows linearly in length n.

  • Robust Phase Estimation of a Hybrid Monte Carlo/Finite Memory Digital Phase-Locked Loop

    Sang-Su LEE  Sung-Hyun YOU  Seok-Kyoon KIM  

     
    LETTER-Data Engineering, Web Information Systems

      Pubricized:
    2019/02/22
      Vol:
    E102-D No:5
      Page(s):
    1089-1092

    Digital phase-locked loops (DPLLs) have been designed in a number of ways to correctly generate pulse signals in various systems. However, the existing DPLLs have poor acquisition performance or are prone to the divergence phenomenon when modeling and/or round-off errors exist and the noise statistics are incorrect. In this paper, we propose a novel DPLL whose phase estimator is designed in hybrid form that utilizes the advantages of Monte Carlo estimation, which is robust to nonlinear effects such as measurement quantization, and a finite memory estimator, which is robust against incorrect noise information and system model mismatch. The robustness of the proposed hybrid Monte Carlo/finite memory DPLL is demonstrated by comparing its phase estimation performance via a numerical example.

  • Power Efficient Object Detector with an Event-Driven Camera for Moving Object Surveillance on an FPGA

    Masayuki SHIMODA  Shimpei SATO  Hiroki NAKAHARA  

     
    PAPER-Applications

      Pubricized:
    2019/02/27
      Vol:
    E102-D No:5
      Page(s):
    1020-1028

    We propose an object detector using a sliding window method for an event-driven camera which outputs a subtracted frame (usually a binary value) when changes are detected in captured images. Since sliding window skips unchanged portions of the output, the number of target object area candidates decreases dramatically, which means that our system operates faster and with lower power consumption than a system using a straightforward sliding window approach. Since the event-driven camera output consists of binary precision frames, an all binarized convolutional neural network (ABCNN) can be available, which means that it allows all convolutional layers to share the same binarized convolutional circuit, thereby reducing the area requirement. We implemented our proposed method on the Xilinx Inc. Zedboard and then evaluated it using the PETS 2009 dataset. The results showed that our system outperformed BCNN system from the viewpoint of detection performance, hardware requirement, and computation time. Also, we showed that FPGA is an ideal method for our system than mobile GPU. From these results, our proposed system is more suitable for the embedded systems based on stationary cameras (such as security cameras).

  • Multi Information Fusion Network for Saliency Quality Assessment

    Kai TAN  Qingbo WU  Fanman MENG  Linfeng XU  

     
    LETTER-Image Recognition, Computer Vision

      Pubricized:
    2019/02/26
      Vol:
    E102-D No:5
      Page(s):
    1111-1114

    Saliency quality assessment aims at estimating the objective quality of a saliency map without access to the ground-truth. Existing works typically evaluate saliency quality by utilizing information from saliency maps to assess its compactness and closedness while ignoring the information from image content which can be used to assess the consistence and completeness of foreground. In this letter, we propose a novel multi-information fusion network to capture the information from both the saliency map and image content. The key idea is to introduce a siamese module to collect information from foreground and background, aiming to assess the consistence and completeness of foreground and the difference between foreground and background. Experiments demonstrate that by incorporating image content information, the performance of the proposed method is significantly boosted. Furthermore, we validate our method on two applications: saliency detection and segmentation. Our method is utilized to choose optimal saliency map from a set of candidate saliency maps, and the selected saliency map is feeded into an segmentation algorithm to generate a segmentation map. Experimental results verify the effectiveness of our method.

  • A Flexible Wireless Sensor Patch for Real-Time Monitoring of Heart Rate and Body Temperature

    Seok-Oh YUN  Jung Hoon LEE  Jin LEE  Choul-Young KIM  

     
    LETTER-Biological Engineering

      Pubricized:
    2019/02/18
      Vol:
    E102-D No:5
      Page(s):
    1115-1118

    Real-time monitoring of heart rate (HR) and body temperature (BT) is crucial for the prognosis and the diagnosis of cardiovascular disease and healthcare. Since current monitoring systems are too rigid and bulky, it is not easy to attach them to the human body. Also, their large current consumption limits the working time. In this paper, we develop a wireless sensor patch for HR and BT by integrating sensor chip, wireless communication chip, and electrodes on the flexible boards that is covered with non-toxic, but skin-friendly adhesive patch. Our experimental results reveal that the flexible wireless sensor patch can efficiently detect early diseases by monitoring the HR and BT in real time.

  • Multi-Target Classification Based Automatic Virtual Resource Allocation Scheme

    Abu Hena Al MUKTADIR  Takaya MIYAZAWA  Pedro MARTINEZ-JULIA  Hiroaki HARAI  Ved P. KAFLE  

     
    PAPER

      Pubricized:
    2019/02/19
      Vol:
    E102-D No:5
      Page(s):
    898-909

    In this paper, we propose a method for automatic virtual resource allocation by using a multi-target classification-based scheme (MTCAS). In our method, an Infrastructure Provider (InP) bundles its CPU, memory, storage, and bandwidth resources as Network Elements (NEs) and categorizes them into several types in accordance to their function, capabilities, location, energy consumption, price, etc. MTCAS is used by the InP to optimally allocate a set of NEs to a Virtual Network Operator (VNO). Such NEs will be subject to some constraints, such as the avoidance of resource over-allocation and the satisfaction of multiple Quality of Service (QoS) metrics. In order to achieve a comparable or higher prediction accuracy by using less training time than the available ensemble-based multi-target classification (MTC) algorithms, we propose a majority-voting based ensemble algorithm (MVEN) for MTCAS. We numerically evaluate the performance of MTCAS by using the MVEN and available MTC algorithms with synthetic training datasets. The results indicate that the MVEN algorithm requires 70% less training time but achieves the same accuracy as the related ensemble based MTC algorithms. The results also demonstrate that increasing the amount of training data increases the efficacy ofMTCAS, thus reducing CPU and memory allocation by about 33% and 51%, respectively.

  • Interference Suppression of Partially Overlapped Signals Using GSVD and Orthogonal Projection

    Liqing SHAN  Shexiang MA  Xin MENG  Long ZHOU  

     
    PAPER-Wireless Communication Technologies

      Pubricized:
    2018/11/21
      Vol:
    E102-B No:5
      Page(s):
    1055-1060

    In order to solve the problem in Automatic Identification System (AIS) that the signal in the target slot cannot be correctly received due to partial overlap of signals in adjacent time slots, the paper introduces a new criterion: maximum expected signal power (MESP) and proposes a novel beamforming algorithm based on generalized singular value decomposition (GSVD) and orthogonal projection. The algorithm employs GSVD to estimate the signal subspace, and adopts orthogonal projection to project the received signal onto the orthogonal subspace of the non-target signal. Then, beamforming technique is used to maximize the output power of the target signal on the basis of MESP. Theoretical analysis and simulation results show the effectiveness of the proposed algorithm.

  • Ultra-Low-Power Class-AB Bulk-Driven OTA with Enhanced Transconductance

    Seong Jin CHOE  Ju Sang LEE  Sung Sik PARK  Sang Dae YU  

     
    BRIEF PAPER-Electronic Circuits

      Vol:
    E102-C No:5
      Page(s):
    420-423

    This paper presents an ultra-low-power class-AB bulk-driven operational transconductance amplifier operating in the subthreshold region. Employing the partial positive feedback in current mirrors, the effective transconductance and output voltage swing are enhanced considerably without additional power consumption and layout area. Both traditional and proposed OTAs are designed and simulated for a 180 nm CMOS process. They dissipate an ultra low power of 192 nW. The proposed OTA features not only a DC gain enhancement of 14 dB but also a slew rate improvement of 200%. In addition, the improved gain leads to a 5.3 times wider unity-gain bandwidth than that of the traditional OTA.

  • Sector Identification for a Large Amount of Airspace Traffic Data

    Shoya TOKUMARU  Kunihiko HIRAISHI  

     
    LETTER-Mathematical Systems Science

      Vol:
    E102-A No:5
      Page(s):
    755-756

    Sectors in the airspace are units of the air traffic control. For airspace traffic data consists of the location of each aircraft with timestamp, we propose an efficient method to identify the sector where each aircraft lies.

  • A Novel Low Complexity Lattice Reduction-Aided Iterative Receiver for Overloaded MIMO Open Access

    Satoshi DENNO  Yuta KAWAGUCHI  Tsubasa INOUE  Yafei HOU  

     
    PAPER-Wireless Communication Technologies

      Pubricized:
    2018/11/21
      Vol:
    E102-B No:5
      Page(s):
    1045-1054

    This paper proposes a novel low complexity lattice reduction-aided iterative receiver for overloaded MIMO. Novel noise cancellation is proposed that increases an equivalent channel gain with a scalar gain introduced in this paper, which results in the improvement of the signal to noise power ratio (SNR). We theoretically analyze the performance of the proposed receiver that the lattice reduction raises the SNR of the detector output signals as the scalar gain increases, when the Lenstra-Lenstra-Lova's (LLL) algorithm is applied to implement the lattice reduction. Because the SNR improvement causes the scalar gain to increase, the performance is improved by iterating the reception process. Computer simulations confirm the performance. The proposed receiver attains a gain of about 5dB at the BER of 10-4 in a 6×2 overloaded MIMO channel. Computational complexity of the proposed receiver is about 1/50 as much as that of the maximum likelihood detection (MLD).

  • Translation Equivalence of Boolean Functions Expressed by Primitive Element

    Yindong CHEN  Liu ZHANG  Deng TANG  Weihong CAI  

     
    LETTER-Cryptography and Information Security

      Vol:
    E102-A No:4
      Page(s):
    672-675

    In recent years, algebraic attacks and fast algebraic attacks have received a lot of attention in the cryptographic community. There are three Boolean functions achieving optimal algebraic immunity based on primitive element of F2n. The support of Boolean functions in [1]-[3] have the same parameter s, which makes us have a large number of Boolean functions with good properties. However, we prove that the Boolean functions are affine equivalence when s takes different values.

  • Quantitative Analyses on Effects from Constraints in Air-Writing Open Access

    Songbin XU  Yang XUE  Yuqing CHEN  

     
    LETTER-Artificial Intelligence, Data Mining

      Pubricized:
    2019/01/28
      Vol:
    E102-D No:4
      Page(s):
    867-870

    Very few existing works about inertial sensor based air-writing focused on writing constraints' effects on recognition performance. We proposed a LSTM-based system and made several quantitative analyses under different constraints settings against CHMM, DTW-AP and CNN. The proposed system shows its advantages in accuracy, real-time performance and flexibility.

  • Quantum Algorithm on Logistic Regression Problem

    Jun Suk KIM  Chang Wook AHN  

     
    LETTER-Fundamentals of Information Systems

      Pubricized:
    2019/01/28
      Vol:
    E102-D No:4
      Page(s):
    856-858

    We examine the feasibility of Deutsch-Jozsa Algorithm, a basic quantum algorithm, on a machine learning-based logistic regression problem. Its major property to distinguish the function type with an exponential speedup can help identify the feature unsuitability much more quickly. Although strict conditions and restrictions to abide exist, we reconfirm the quantum superiority in many aspects of modern computing.

2221-2240hit(20498hit)