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221-240hit(2145hit)

  • A Novel Speech Enhancement System Based on the Coherence-Based Algorithm and the Differential Beamforming

    Lei WANG  Jie ZHU  

     
    LETTER-Speech and Hearing

      Pubricized:
    2018/08/31
      Vol:
    E101-D No:12
      Page(s):
    3253-3257

    This letter proposes a novel speech enhancement system based on the ‘L’ shaped triple-microphone. The modified coherence-based algorithm and the first-order differential beamforming are combined to filter the spatial distributed noise. The experimental results reveal that the proposed algorithm achieves significant performance in spatial filtering under different noise scenarios.

  • Joint Iterative Decoding of Spatially Coupled Low-Density Parity-Check Codes for Position Errors in Racetrack Memories Open Access

    Ryo SHIBATA  Gou HOSOYA  Hiroyuki YASHIMA  

     
    PAPER-Coding theory and techniques

      Vol:
    E101-A No:12
      Page(s):
    2055-2063

    Racetrack memory (RM) has attracted much attention. In RM, insertion and deletion (ID) errors occur as a result of an unstable reading process and are called position errors. In this paper, we first define a probabilistic channel model of ID errors in RM with multiple read-heads (RHs). Then, we propose a joint iterative decoding algorithm for spatially coupled low-density parity-check (SC-LDPC) codes over such a channel. We investigate the asymptotic behaviors of SC-LDPC codes under the proposed decoding algorithm using density evolution (DE). With DE, we reveal the relationship between the number of RHs and achievable information rates, along with the iterative decoding thresholds. The results show that increasing the number of RHs provides higher decoding performances, although the proposed decoding algorithm requires each codeword bit to be read only once regardless of the number of RHs. Moreover, we show the performance improvement produced by adjusting the order of the SC-LDPC codeword bits in RM.

  • Statistical-Mechanics Approach to Theoretical Analysis of the FXLMS Algorithm Open Access

    Seiji MIYOSHI  Yoshinobu KAJIKAWA  

     
    PAPER-Digital Signal Processing

      Vol:
    E101-A No:12
      Page(s):
    2419-2433

    We analyze the behaviors of the FXLMS algorithm using a statistical-mechanical method. The cross-correlation between a primary path and an adaptive filter and the autocorrelation of the adaptive filter are treated as macroscopic variables. We obtain simultaneous differential equations that describe the dynamical behaviors of the macroscopic variables under the condition that the tapped-delay line is sufficiently long. The obtained equations are deterministic and closed-form. We analytically solve the equations to obtain the correlations and finally compute the mean-square error. The obtained theory can quantitatively predict the behaviors of computer simulations including the cases of both not only white but also nonwhite reference signals. The theory also gives the upper limit of the step size in the FXLMS algorithm.

  • A Chaotic Artificial Bee Colony Algorithm Based on Lévy Search

    Shijie LIN  Chen DONG  Zhiqiang WANG  Wenzhong GUO  Zhenyi CHEN  Yin YE  

     
    LETTER-Algorithms and Data Structures

      Vol:
    E101-A No:12
      Page(s):
    2472-2476

    A Lévy search strategy based chaotic artificial bee colony algorithm (LABC) is proposed in this paper. The chaotic sequence, global optimal mechanism and Lévy flight mechanism were introduced respectively into the initialization, the employed bee search and the onlooker bee search. The experiments show that the proposed algorithm performed better in convergence speed, global search ability and optimization accuracy than other improved ABC.

  • Hardware Based Parallel Phrase Matching Engine in Dictionary Compressor

    Qian DONG  

     
    LETTER-Architecture

      Pubricized:
    2018/09/18
      Vol:
    E101-D No:12
      Page(s):
    2968-2970

    A parallel phrase matching (PM) engine for dictionary compression is presented. Hardware based parallel chaining hash can eliminate erroneous PM results raised by hash collision; while newly-designed storage architecture holding PM results solved the data dependency issue; Thus, the average compression speed is increased by 53%.

  • Optimization of the Window Function in an Adaptive Noise Canceller

    Yusuke MATSUBARA  Naohiro TODA  

     
    PAPER-Digital Signal Processing

      Vol:
    E101-A No:11
      Page(s):
    1854-1860

    Adaptive noise cancellation using adaptive filters is a known method for removing noise that interferes with signal measurements. The adaptive noise canceller performs filtering based on the current situation through a windowing process. The shape of the window function determines the tracking performance of the adaptive noise canceller with respect to the fluctuation of the property of the unknown system that noise (reference signal) passes. However, the shape of the window function in the field of adaptive filtering has not yet been considered in detail. This study mathematically treats the effect of the window function on the adaptive noise canceller and proposes an optimization method for the window function in situations where offline processing can be performed, such as biomedical signal measurements. We also demonstrate the validity of the optimized window function through numerical experiments.

  • On the Optimal Configuration of Grouping-Based Framed Slotted ALOHA

    Young-Beom KIM  

     
    LETTER-Information Network

      Pubricized:
    2018/08/08
      Vol:
    E101-D No:11
      Page(s):
    2823-2826

    In this letter, we consider several optimization problems associated with the configuration of grouping-based framed slotted ALOHA protocols. Closed-form formulas for determining the optimal values of system parameters such as the process termination time and confidence levels for partitioned groups are presented. Further, we address the maximum group size required for meaningful grouping gain and the effectiveness of the grouping technique in light of signaling overhead.

  • A Low-Complexity and Fast Convergence Message Passing Receiver Based on Partial Codeword Transmission for SCMA Systems

    Xuewan ZHANG  Wenping GE  Xiong WU  Wenli DAI  

     
    PAPER-Transmission Systems and Transmission Equipment for Communications

      Pubricized:
    2018/05/16
      Vol:
    E101-B No:11
      Page(s):
    2259-2266

    Sparse code multiple access (SCMA) based on the message passing algorithm (MPA) for multiuser detection is a competitive non-orthogonal multiple access technique for fifth-generation wireless communication networks Among the existing multiuser detection schemes for uplink (UP) SCMA systems, the serial MPA (S-MPA) scheme, where messages are updated sequentially, generally converges faster than the conventional MPA (C-MPA) scheme, where all messages are updated in a parallel manner. In this paper, the optimization of message scheduling in the S-MPA scheme is proposed. Firstly, some statistical results for the probability density function (PDF) of the received signal are obtained at various signal-to-noise ratios (SNR) by using the Monte Carlo method. Then, based on the non-orthogonal property of SCMA, the data mapping relationship between resource nodes and user nodes is comprehensively analyzed. A partial codeword transmission of S-MPA (PCTS-MPA) with threshold decision scheme of PDF is proposed and verified. Simulations show that the proposed PCTS-MPA not only reduces the complexity of MPA without changing the bit error ratio (BER), but also has a faster convergence than S-MPA, especially at high SNR values.

  • Accelerating a Lloyd-Type k-Means Clustering Algorithm with Summable Lower Bounds in a Lower-Dimensional Space

    Kazuo AOYAMA  Kazumi SAITO  Tetsuo IKEDA  

     
    PAPER-Artificial Intelligence, Data Mining

      Pubricized:
    2018/08/02
      Vol:
    E101-D No:11
      Page(s):
    2773-2783

    This paper presents an efficient acceleration algorithm for Lloyd-type k-means clustering, which is suitable to a large-scale and high-dimensional data set with potentially numerous classes. The algorithm employs a novel projection-based filter (PRJ) to avoid unnecessary distance calculations, resulting in high-speed performance keeping the same results as a standard Lloyd's algorithm. The PRJ exploits a summable lower bound on a squared distance defined in a lower-dimensional space to which data points are projected. The summable lower bound can make the bound tighter dynamically by incremental addition of components in the lower-dimensional space within each iteration although the existing lower bounds used in other acceleration algorithms work only once as a fixed filter. Experimental results on large-scale and high-dimensional real image data sets demonstrate that the proposed algorithm works at high speed and with low memory consumption when large k values are given, compared with the state-of-the-art algorithms.

  • Critical Nodes Identification of Power Grids Based on Network Efficiency

    WenJie KANG  PeiDong ZHU  JieXin ZHANG  JunYang ZHANG  

     
    PAPER-Information Network

      Pubricized:
    2018/07/27
      Vol:
    E101-D No:11
      Page(s):
    2762-2772

    Critical nodes identification is of great significance in protecting power grids. Network efficiency can be used as an evaluation index to identify the critical nodes and is an indicator to quantify how efficiently a network exchanges information and transmits energy. Since power grid is a heterogeneous network and can be decomposed into small functionally-independent grids, the concept of the Giant Component does not apply to power grids. In this paper, we first model the power grid as the directed graph and define the Giant Efficiency sub-Graph (GEsG). The GEsG is the functionally-independent unit of the network where electric energy can be transmitted from a generation node (i.e., power plants) to some demand nodes (i.e., transmission stations and distribution stations) via the shortest path. Secondly, we propose an algorithm to evaluate the importance of nodes by calculating their critical degree, results of which can be used to identify critical nodes in heterogeneous networks. Thirdly, we define node efficiency loss to verify the accuracy of critical nodes identification (CNI) algorithm and compare the results that GEsG and Giant Component are separately used as assessment criteria for computing the node efficiency loss. Experiments prove the accuracy and efficiency of our CNI algorithm and show that the GEsG can better reflect heterogeneous characteristics and power transmission of power grids than the Giant Component. Our investigation leads to a counterintuitive finding that the most important critical nodes may not be the generation nodes but some demand nodes.

  • Development of Small Dielectric Lens for Slot Antenna Using Topology Optimization with Normalized Gaussian Network

    Keiichi ITOH  Haruka NAKAJIMA  Hideaki MATSUDA  Masaki TANAKA  Hajime IGARASHI  

     
    PAPER

      Vol:
    E101-C No:10
      Page(s):
    784-790

    This paper reports a novel 3D topology optimization method based on the finite difference time domain (FDTD) method for a dielectric lens antenna. To obtain an optimal lens with smooth boundary, we apply normalized Gaussian networks (NGnet) to 3D topology optimization. Using the proposed method, the dielectric lens with desired radiation characteristics can be designed. As an example of the optimization using the proposed method, the width of the main beam is minimized assuming spatial symmetry. In the optimization, the lens is assumed to be loaded on the aperture of a waveguide slot antenna and is smaller compared with the wavelength. It is shown that the optimized lens has narrower beamwidth of the main beam than that of the conventional lens.

  • Recovery Performance of IHT and HTP Algorithms under General Perturbations

    Xiaobo ZHANG  Wenbo XU  Yupeng CUI  Jiaru LIN  

     
    LETTER-Digital Signal Processing

      Vol:
    E101-A No:10
      Page(s):
    1698-1702

    In compressed sensing, most previous researches have studied the recovery performance of a sparse signal x based on the acquired model y=Φx+n, where n denotes the noise vector. There are also related studies for general perturbation environment, i.e., y=(Φ+E)x+n, where E is the measurement perturbation. IHT and HTP algorithms are the classical algorithms for sparse signal reconstruction in compressed sensing. Under the general perturbations, this paper derive the required sufficient conditions and the error bounds of IHT and HTP algorithms.

  • An Efficient Double-Sourced Energy Transfer Scheme for Mobility-Constrained IoT Applications

    Chao WU  Yuan'an LIU  Fan WU  Suyan LIU  

     
    PAPER-Energy in Electronics Communications

      Pubricized:
    2018/04/11
      Vol:
    E101-B No:10
      Page(s):
    2213-2221

    The energy efficiency of Internet of Things (IoT) could be improved by RF energy transfer technologies.Aiming at IoT applications with a mobility-constrained mobile sink, a double-sourced energy transfer (D-ET) scheme is proposed. Based on the hierarchical routing information of network nodes, the Simultaneous Wireless Information and Power Transfer (SWIPT) method helps to improve the global data gathering performance. A genetic algorithm and graph theory are combined to analyze the node energy consumption distribution. Then dedicated charger nodes are deployed on the basis of the genetic algorithm's output. Experiments are conducted using Network Simulator-3 (NS-3) to evaluate the performance of the D-ET scheme. The simulation results show D-ET outperforms other schemes in terms of network lifetime and data gathering performance.

  • Projection Algorithm-Based Dynamic Surface Control of Dual-Motor Driving Servo System with Backlash Nonlinearity

    Haibo ZHAO  Chengguang WANG  

     
    PAPER-Systems and Control

      Vol:
    E101-A No:10
      Page(s):
    1646-1657

    Dual-motor driving servo systems are widely used in many military and civil fields. Since backlash nonlinearity affects the dynamic performance and steady-state tracking accuracy of these systems, it is necessary to study a control strategy to reduce its adverse effects. We first establish the state-space model of a system. To facilitate the design of the controller, we simplify the model based on the state-space model. Then, we design an adaptive controller combining a projection algorithm with dynamic surface control applied to a dual-motor driving servo system, which we believe to be the first, and analyze its stability. Simulation results show that projection algorithm-based dynamic surface control has smaller tracking error, faster tracking speed, and better robustness and stability than mere dynamic surface control. Finally, the experimental analysis validates the effectiveness of the proposed control algorithm.

  • A Load Balancing Algorithm for Layer 2 Routing in IEEE 802.15.10

    Takuya HABARA  Keiichi MIZUTANI  Hiroshi HARADA  

     
    PAPER

      Pubricized:
    2018/04/13
      Vol:
    E101-B No:10
      Page(s):
    2131-2141

    In this paper, we propose an IEEE 802.15.10-based layer 2 routing (L2R) method with a load balancing algorithm; the proposal considers fairness in terms of the cumulative number of sending packets at each terminal to resolve the packet concentration problem for the IEEE 802.15.4-based low-power consumption wireless smart utility network (Wi-SUN) systems. The proposal uses the accumulated sending times of each terminal as a weight in calculating each path quality metric (PQM) to decide multi-hopping routes with load balancing in the network. Computer simulation of the mesh network with 256 terminals shows that the proposed routing method can improve the maximum sending ratio (MSR), defined as the ratio of the maximum sending times to the average number of sending times in the network, by 56% with no degradation of the end-to-end communication success ratio (E2E-SR). The proposed algorithm is also experimentally evaluated by using actual Wi-SUN modules. The proposed routing method also improves the MSR by 84% with 70 terminals. Computer simulations and experiments prove the effectiveness of the proposed method in terms of load balancing.

  • Fast CU Termination Algorithm with AdaBoost Classifier in HEVC Encoder

    Yitong LIU  Wang TIAN  Yuchen LI  Hongwen YANG  

     
    LETTER

      Pubricized:
    2018/06/20
      Vol:
    E101-D No:9
      Page(s):
    2220-2223

    High Efficiency Video Coding (HEVC) has a better coding efficiency comparing with H.264/AVC. However, performance enhancement results in increased computational complexity which is mainly brought by the quadtree based coding tree unit (CTU). In this paper, an early termination algorithm based on AdaBoost classifier for coding unit (CU) is proposed to accelerate the process of searching the best partition for CTU. Experiment results indicate that our method can save 39% computational complexity on average at the cost of increasing Bjontegaard-Delta rate (BD-rate) by 0.18.

  • An Efficient Pattern Matching Algorithm for Unordered Term Tree Patterns of Bounded Dimension

    Takayoshi SHOUDAI  Tetsuhiro MIYAHARA  Tomoyuki UCHIDA  Satoshi MATSUMOTO  Yusuke SUZUKI  

     
    PAPER

      Vol:
    E101-A No:9
      Page(s):
    1344-1354

    A term is a connected acyclic graph (unrooted unordered tree) pattern with structured variables, which are ordered lists of one or more distinct vertices. A variable of a term has a variable label and can be replaced with an arbitrary tree by hyperedge replacement according to the variable label. The dimension of a term is the maximum number of vertices in the variables of it. A term is said to be linear if each variable label in it occurs exactly once. Let T be a tree and t a linear term. In this paper, we study the graph pattern matching problem (GPMP) for T and t, which decides whether or not T is obtained from t by replacing variables in t with some trees. First we show that GPMP for T and t is NP-complete if the dimension of t is greater than or equal to 4. Next we give a polynomial time algorithm for solving GPMP for a tree of bounded degree and a linear term of bounded dimension. Finally we show that GPMP for a tree of arbitrary degree and a linear term of dimension 2 is solvable in polynomial time.

  • Enumerating Floorplans with Columns

    Katsuhisa YAMANAKA  Md. Saidur RAHMAN  Shin-ichi NAKANO  

     
    PAPER

      Vol:
    E101-A No:9
      Page(s):
    1392-1397

    Given an axis-aligned rectangle R and a set P of n points in the proper inside of R we wish to partition R into a set S of n+1 rectangles so that each point in P is on the common boundary between two rectangles in S. We call such a partition of R a feasible floorplan of R with respect to P. Intuitively, P is the locations of columns and a feasible floorplan is a floorplan in which no column is in the proper inside of a room, i.e., columns are allowed to be placed only on the partition walls between rooms. In this paper we give an efficient algorithm to enumerate all feasible floorplans of R with respect to P. The algorithm is based on the reverse search method, and enumerates all feasible floorplans in O(|SP|) time using O(n) space, where SP is the set of the feasible floorplans of R with respect to P, while the known algorithms need either O(n|SP|) time and O(n) space or O(log n|SP|) time and O(n3) space.

  • The Stable Roommates Problem with Unranked Entries

    Hiroaki SUTO  Aleksandar SHURBEVSKI  Hiroshi NAGAMOCHI  

     
    PAPER

      Vol:
    E101-A No:9
      Page(s):
    1412-1419

    The family of stable matching problems have been well-studied across a wide field of research areas, including economics, mathematics and computer science. In general, an instance of a stable matching problem is given by a set of participants who have expressed their preferences of each other, and asks to find a “stable” matching, that is, a pairing of the participants such that no unpaired participants prefer each other to their assigned partners. In the case of the Stable Roommates Problem (SR), it is known that given an even number n of participants, there might not exist a stable matching that pairs all of the participants, but there exist efficient algorithms to determine if this is possible or not, and if it is possible, produce such a matching. Common extensions of SR allow for the participants' preference lists to be incomplete, or include indifference. Allowing indifference in turn, gives rise to different possible definitions of stability, super, strong, and weak stability. While instances asking for super and strongly stable matching can be efficiently solved even if preference lists are incomplete, the case of weak stability is NP-complete. We examine a restricted case of indifference, introducing the concept of unranked entries. For this type of instances, we show that the problem of finding a weakly stable matching remains NP-complete even if each participant has a complete preference list with at most two unranked entries, or is herself unranked for up to three other participants. On the other hand, for instances where there are m acceptable pairs and there are in total k unranked entries in all of the participants' preference lists, we propose an O(2kn2)-time and polynomial space algorithm that finds a stable matching, or determines that none exists in the given instance.

  • Review Rating Prediction on Location-Based Social Networks Using Text, Social Links, and Geolocations

    Yuehua WANG  Zhinong ZHONG  Anran YANG  Ning JING  

     
    PAPER-Artificial Intelligence, Data Mining

      Pubricized:
    2018/06/01
      Vol:
    E101-D No:9
      Page(s):
    2298-2306

    Review rating prediction is an important problem in machine learning and data mining areas and has attracted much attention in recent years. Most existing methods for review rating prediction on Location-Based Social Networks only capture the semantics of texts, but ignore user information (social links, geolocations, etc.), which makes them less personalized and brings down the prediction accuracy. For example, a user's visit to a venue may be influenced by their friends' suggestions or the travel distance to the venue. To address this problem, we develop a review rating prediction framework named TSG by utilizing users' review Text, Social links and the Geolocation information with machine learning techniques. Experimental results demonstrate the effectiveness of the framework.

221-240hit(2145hit)

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