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  • A Device-Centric Clustering Approach for Large-Scale Distributed Antenna Systems Using User Cooperation

    Ou ZHAO  Lin SHAN  Wei-Shun LIAO  Mirza GOLAM KIBRIA  Huan-Bang LI  Kentaro ISHIZU  Fumihide KOJIMA  

     
    PAPER-Wireless Communication Technologies

      Pubricized:
    2018/08/13
      Vol:
    E102-B No:2
      Page(s):
    359-372

    Large-scale distributed antenna systems (LS-DASs) are gaining increasing interest and emerging as highly promising candidates for future wireless communications. To improve the user's quality of service (QoS) in these systems, this study proposes a user cooperation aided clustering approach based on device-centric architectures; it enables multi-user multiple-input multiple-output transmissions with non-reciprocal setups. We actively use device-to-device communication techniques to achieve the sharing of user information and try to form clusters on user side instead of the traditional way that performs clustering on base station (BS) side in data offloading. We further adopt a device-centric architecture to break the limits of the classical BS-centric cellular structure. Moreover, we derive an approximate expression to calculate the user rate for LS-DASs with employment of zero-forcing precoding and consideration of inter-cluster interference. Numerical results indicate that the approximate expression predicts the user rate with a lower computational cost than is indicated by computer simulation, and the proposed approach provides better user experience for, in particular, the users who have unacceptable QoS.

  • Low-Power Fifth-Order Butterworth OTA-C Low-Pass Filter with an Impedance Scaler for Portable ECG Applications

    Shuenn-Yuh LEE  Cheng-Pin WANG  Chuan-Yu SUN  Po-Hao CHENG  Yuan-Sun CHU  

     
    PAPER-Electronic Circuits

      Vol:
    E101-C No:12
      Page(s):
    942-952

    This study proposes a multiple-output differential-input operational transconductance amplifier-C (MODI OTA-C) filter with an impedance scaler to detect cardiac activity. A ladder-type fifth-orderButterworth low-pass filter with a large time constant and low noise is implemented to reduce coefficient sensitivity and address signal distortion. Moreover, linearized MODI OTA structures with reduced transconductance and impedance scaler circuits for noise reduction are used to achieve a wide dynamic range (DR). The OTA-based circuit is operated in the subthreshold region at a supply voltage of 1 V to reduce the power consumption of the wearable device in long-term use. Experimental results of the filter with a bandwidth of 250 Hz reveal that DR is 57.6 dB, and the harmonic distortion components are below -59 dB. The power consumption of the filter, which is fabricated through a TSMC 0.18 µm CMOS process, is lower than 390 nW, and the active area is 0.135 mm2.

  • Enhancing Job Scheduling on Inter-Rackscale Datacenters with Free-Space Optical Links

    Yao HU  Michihiro KOIBUCHI  

     
    PAPER-Information networks

      Pubricized:
    2018/09/18
      Vol:
    E101-D No:12
      Page(s):
    2922-2932

    Datacenter growth in traffic and scale is driving innovations in constructing tightly-coupled facilities with low-latency communication for different specific applications. A famous custom design is rackscale (RS) computing by gathering key server resource components into different resource pools. Such a resource-pooling implementation requires a new software stack to manage resource discovery, resource allocation and data communication. The reconfiguration of interconnection networks on their components is potentially needed to support the above demand in RS. In this context as an evolution of the original RS architecture the inter-rackscale (IRS) architecture, which disaggregates hardware components into different racks according to their own areas, has been proposed. The heart of IRS is to use a limited number of free-space optics (FSO) channels for wireless connections between different resource racks, via which selected pairs of racks can communicate directly and thus resource-pooling requirements are met without additional software management. In this study we evaluate the influences of FSO links on IRS networks. Evaluation results show that FSO links reduce average communication hop count for user jobs, which is close to the best possible value of 2 hops and thus provides comparable benchmark performance to that of the counterpart RS architecture. In addition, if four FSO terminals per rack are allowed, the CPU/SSD (GPU) interconnection latency is reduced by 25.99% over Fat-tree and by 67.14% over 2-D Torus. We also present the advantage of an FSO-equipped IRS system in average turnaround time of dispatched jobs for given sets of benchmark workloads.

  • Accurate Scale Adaptive and Real-Time Visual Tracking with Correlation Filters

    Jiatian PI  Shaohua ZENG  Qing ZUO  Yan WEI  

     
    LETTER-Image Recognition, Computer Vision

      Pubricized:
    2018/07/27
      Vol:
    E101-D No:11
      Page(s):
    2855-2858

    Visual tracking has been studied for several decades but continues to draw significant attention because of its critical role in many applications. This letter handles the problem of fixed template size in Kernelized Correlation Filter (KCF) tracker with no significant decrease in the speed. Extensive experiments are performed on the new OTB dataset.

  • Efficient Transceiver Design for Large-Scale SWIPT System with Time-Switching and Power-Splitting Receivers

    Pham-Viet TUAN  Insoo KOO  

     
    PAPER-Terrestrial Wireless Communication/Broadcasting Technologies

      Pubricized:
    2018/01/12
      Vol:
    E101-B No:7
      Page(s):
    1744-1751

    The combination of large-scale antenna arrays and simultaneous wireless information and power transfer (SWIPT), which can provide enormous increase of throughput and energy efficiency is a promising key in next generation wireless system (5G). This paper investigates efficient transceiver design to minimize transmit power, subject to users' required data rates and energy harvesting, in large-scale SWIPT system where the base station utilizes a very large number of antennas for transmitting both data and energy to multiple users equipped with time-switching (TS) or power-splitting (PS) receive structures. We first propose the well-known semidefinite relaxation (SDR) and Gaussian randomization techniques to solve the minimum transmit power problems. However, for these large-scale SWIPT problems, the proposed scheme, which is based on conventional SDR method, is not suitable due to its excessive computation costs, and a consensus alternating direction method of multipliers (ADMM) cannot be directly applied to the case that TS or PS ratios are involved in the optimization problem. Therefore, in the second solution, our first step is to optimize the variables of TS or PS ratios, and to achieve simplified problems. After then, we propose fast algorithms for solving these problems, where the outer loop of sequential parametric convex approximation (SPCA) is combined with the inner loop of ADMM. Numerical simulations show the fast convergence and superiority of the proposed solutions.

  • Cyber-Physical Hybrid Environment Using a Largescale Discussion System Enhances Audiences' Participation and Satisfaction in the Panel Discussion

    Satoshi KAWASE  Takayuki ITO  Takanobu OTSUKA  Akihisa SENGOKU  Shun SHIRAMATSU  Tokuro MATSUO  Tetsuya OISHI  Rieko FUJITA  Naoki FUKUTA  Katsuhide FUJITA  

     
    PAPER-Creativity Support Systems and Decision Support Systems

      Pubricized:
    2018/01/19
      Vol:
    E101-D No:4
      Page(s):
    847-855

    Performance based on multi-party discussion has been reported to be superior to that based on individuals. However, it is impossible that all participants simultaneously express opinions due to the time and space limitations in a large-scale discussion. In particular, only a few representative discussants and audiences can speak in conventional unidirectional discussions (e.g., panel discussion), although many participants gather for the discussion. To solve these problems, in this study, we proposed a cyber-physical discussion using “COLLAGREE,” which we developed for building consensus of large-scale online discussions. COLLAGREE is equipped with functions such as a facilitator, point ranking system, and display of discussion in tree structure. We focused on the relationship between satisfaction with the discussion and participants' desire to express opinions. We conducted the experiment in the panel discussion of an actual international conference. Participants who were audiences in the floor used COLLAGREE during the panel discussion. They responded to questionnaires after the experiment. The main findings are as follows: (1) Participation in online discussion was associated with the satisfaction of the participants; (2) Participants who desired to positively express opinions joined the cyber-space discussion; and (3) The satisfaction of participants who expressed opinions in the cyber-space discussion was higher than those of participants who expressed opinions in the real-space discussion and those who did not express opinions in both the cyber- and real-space discussions. Overall, active behaviors in the cyber-space discussion were associated with participants' satisfaction with the entire discussion, suggesting that cyberspace provided useful alternative opportunities to express opinions for audiences who used to listen to conventional unidirectional discussions passively. In addition, a complementary relationship exists between participation in the cyber-space and real-space discussions. These findings can serve to create a user-friendly discussion environment.

  • Extended Personalized Individual Semantics with 2-Tuple Linguistic Preference for Supporting Consensus Decision Making

    Haiyan HUANG  Chenxi LI  

     
    PAPER-Fundamentals of Information Systems

      Pubricized:
    2017/11/22
      Vol:
    E101-D No:2
      Page(s):
    387-395

    Considering that different people are different in their linguistic preference and in order to determine the consensus state when using Computing with Words (CWW) for supporting consensus decision making, this paper first proposes an interval composite scale based 2-tuple linguistic model, which realizes the process of translation from word to interval numerical and the process of retranslation from interval numerical to word. Second, this paper proposes an interval composite scale based personalized individual semantics model (ICS-PISM), which can provide different linguistic representation models for different decision-makers. Finally, this paper proposes a consensus decision making model with ICS-PISM, which includes a semantic translation and retranslation phase during decision process and determines the consensus state of the whole decision process. These models proposed take into full consideration that human language contains vague expressions and usually real-world preferences are uncertain, and provide efficient computation models to support consensus decision making.

  • On Random Walk Based Weighted Graph Sampling

    Jiajun ZHOU  Bo LIU  Lu DENG  Yaofeng CHEN  Zhefeng XIAO  

     
    LETTER-Fundamentals of Information Systems

      Pubricized:
    2017/11/01
      Vol:
    E101-D No:2
      Page(s):
    535-538

    Graph sampling is an effective method to sample a representative subgraph from a large-scale network. Recently, researches have proven that several classical sampling methods are able to produce graph samples but do not well match the distribution of the graph properties in the original graph. On the other hand, the validation of these sampling methods and the scale of a good graph sample have not been examined on weighted graphs. In this paper, we propose the weighted graph sampling problem. We consider the proper size of a good graph sample, propose novel methods to verify the effectiveness of sampling and test several algorithms on real datasets. Most notably, we get new practical results, shedding a new insight on weighted graph sampling. We find weighted random walk performs best compared with other algorithms and a graph sample of 20% is enough for weighted graph sampling.

  • Accelerated Widely-Linear Signal Detection by Polynomials for Over-Loaded Large-Scale MIMO Systems

    Qian DENG  Li GUO  Chao DONG  Jiaru LIN  Xueyan CHEN  

     
    PAPER-Antennas and Propagation

      Pubricized:
    2017/07/13
      Vol:
    E101-B No:1
      Page(s):
    185-194

    In this paper, we propose a low-complexity widely-linear minimum mean square error (WL-MMSE) signal detection based on the Chebyshev polynomials accelerated symmetric successive over relaxation (SSORcheb) algorithm for uplink (UL) over-loaded large-scale multiple-input multiple-output (MIMO) systems. The technique of utilizing Chebyshev acceleration not only speeds up the convergence rate significantly, and maximizes the data throughput, but also reduces the cost. By utilizing the random matrix theory, we present good estimates for the Chebyshev acceleration parameters of the proposed signal detection in real large-scale MIMO systems. Simulation results demonstrate that the new WL-SSORcheb-MMSE detection not only outperforms the recently proposed linear iterative detection, and the optimal polynomial expansion (PE) WL-MMSE detection, but also achieves a performance close to the exact WL-MMSE detection. Additionally, the proposed detection offers superior sum rate and bit error rate (BER) performance compared to the precision MMSE detection with substantially fewer arithmetic operations in a short coherence time. Therefore, the proposed detection can satisfy the high-density and high-mobility requirements of some of the emerging wireless networks, such as, the high-mobility Internet of Things (IoT) networks.

  • Energy-Performance Modeling of Speculative Checkpointing for Exascale Systems

    Muhammad ALFIAN AMRIZAL  Atsuya UNO  Yukinori SATO  Hiroyuki TAKIZAWA  Hiroaki KOBAYASHI  

     
    PAPER-High performance computing

      Pubricized:
    2017/07/14
      Vol:
    E100-D No:12
      Page(s):
    2749-2760

    Coordinated checkpointing is a widely-used checkpoint/restart protocol for fault-tolerance in large-scale HPC systems. However, this protocol will involve massive amounts of I/O concentration, resulting in considerably high checkpoint overhead and high energy consumption. This paper focuses on speculative checkpointing, a CPR mechanism that allows for temporal distribution of checkpointings to avoid I/O concentration. We propose execution time and energy models for speculative checkpointing, and investigate energy-performance characteristics when speculative checkpointing is adopted in exascale systems. Using these models, we study the benefit of speculative checkpointing over coordinated checkpointing under various realistic scenarios for exascale HPC systems. We show that, compared to coordinated checkpointing, speculative checkpointing can achieve up to a 11% energy reduction at the cost of a relatively-small increase in the execution time. In addition, a significant energy-performance trade-off is expected when the system scale exceeds 1.2 million nodes.

  • Forecasting Network Traffic at Large Time Scales by Using Dual-Related Method

    Liangrui TANG  Shiyu JI  Shimo DU  Yun REN  Runze WU  Xin WU  

     
    PAPER-Network

      Pubricized:
    2017/04/24
      Vol:
    E100-B No:11
      Page(s):
    2049-2059

    Network traffic forecasts, as it is well known, can be useful for network resource optimization. In order to minimize the forecast error by maximizing information utilization with low complexity, this paper concerns the difference of traffic trends at large time scales and fits a dual-related model to predict it. First, by analyzing traffic trends based on user behavior, we find both hour-to-hour and day-to-day patterns, which means that models based on either of the single trends are unable to offer precise predictions. Then, a prediction method with the consideration of both daily and hourly traffic patterns, called the dual-related forecasting method, is proposed. Finally, the correlation for traffic data is analyzed based on model parameters. Simulation results demonstrate the proposed model is more effective in reducing forecasting error than other models.

  • Real-Time Object Tracking via Fusion of Global and Local Appearance Models

    Ju Hong YOON  Jungho KIM  Youngbae HWANG  

     
    LETTER-Image Recognition, Computer Vision

      Pubricized:
    2017/08/07
      Vol:
    E100-D No:11
      Page(s):
    2738-2743

    In this letter, we propose a robust and fast tracking framework by combining local and global appearance models to cope with partial occlusion and pose variations. The global appearance model is represented by a correlation filter to efficiently estimate the movement of the target and the local appearance model is represented by local feature points to handle partial occlusion and scale variations. Then global and local appearance models are unified via the Bayesian inference in our tracking framework. We experimentally demonstrate the effectiveness of the proposed method in both terms of accuracy and time complexity, which takes 12ms per frame on average for benchmark datasets.

  • A Novel Component Ranking Method for Improving Software Reliability

    Lixing XUE  Decheng ZUO  Zhan ZHANG  Na WU  

     
    LETTER-Dependable Computing

      Pubricized:
    2017/07/24
      Vol:
    E100-D No:10
      Page(s):
    2653-2658

    This paper proposes a component ranking method to identify important components which have great impact on the system reliability. This method, which is opposite to an existing method, believes components which frequently invoke other components have more impact than others and employs component invocation structures and invocation frequencies for making important component ranking. It can strongly support for improving the reliability of software systems, especially large-scale systems. Extensive experiments are provided to validate this method and draw performance comparison.

  • Interpersonal Coevolution of Body Movements in Daily Face-to-Face Communication

    Taiki OGATA  Naoki HIGO  Takayuki NOZAWA  Eisuke ONO  Kazuo YANO  Koji ARA  Yoshihiro MIYAKE  

     
    PAPER-Human-computer Interaction

      Pubricized:
    2017/07/18
      Vol:
    E100-D No:10
      Page(s):
    2547-2555

    People's body movements in daily face-to-face communication influence each other. For instance, during a heated debate, the participants use more gestures and other body movements, while in a calm discussion they use fewer gestures. This “coevolution” of interpersonal body movements occurs on multiple time scales, like minutes or hours. However, the multi-time-scale coevolution in daily communication is not clear yet. In this paper, we explore the minute-to-minute coevolution of interpersonal body movements in daily communication and investigate the characteristics of this coevolution. We present quantitative data on upper-body movements from thousand test subjects from seven organizations gathered over several months via wearable sensors. The device we employed measured upper-body movements with an accelerometer and the duration of face-to-face communication with an infrared ray sensor on a minute-by-minute basis. We defined a coevolution measure between two people as the number of per-minute changes of their body movement and compared the indices for face-to-face and non-face-to-face situations. We found that on average, the amount of people's body movements changed correspondingly for face-to-face communication and that the average rate of coevolution in the case of face-to-face communication was 3-4% higher than in the case of non-face-to-face situation. These results reveal minute-to-minute coevolution of upper-body movements between people in daily communication. The finding suggests that the coevolution of body movement arises in multiple time scales.

  • Estimation of Dense Displacement by Scale Invariant Polynomial Expansion of Heterogeneous Multi-View Images

    Kazuki SHIBATA  Mehrdad PANAHPOUR TEHERANI  Keita TAKAHASHI  Toshiaki FUJII  

     
    LETTER

      Pubricized:
    2017/06/14
      Vol:
    E100-D No:9
      Page(s):
    2048-2051

    Several applications for 3-D visualization require dense detection of correspondence for displacement estimation among heterogeneous multi-view images. Due to differences in resolution or sampling density and field of view in the images, estimation of dense displacement is not straight forward. Therefore, we propose a scale invariant polynomial expansion method that can estimate dense displacement between two heterogeneous views. Evaluation on heterogeneous images verifies accuracy of our approach.

  • APPraiser: A Large Scale Analysis of Android Clone Apps

    Yuta ISHII  Takuya WATANABE  Mitsuaki AKIYAMA  Tatsuya MORI  

     
    PAPER-Program Analysis

      Pubricized:
    2017/05/18
      Vol:
    E100-D No:8
      Page(s):
    1703-1713

    Android is one of the most popular mobile device platforms. However, since Android apps can be disassembled easily, attackers inject additional advertisements or malicious codes to the original apps and redistribute them. There are a non-negligible number of such repackaged apps. We generally call those malicious repackaged apps “clones.” However, there are apps that are not clones but are similar to each other. We call such apps “relatives.” In this work, we developed a framework called APPraiser that extracts similar apps and classifies them into clones and relatives from the large dataset. We used the APPraiser framework to study over 1.3 million apps collected from both official and third-party marketplaces. Our extensive analysis revealed the following findings: In the official marketplace, 79% of similar apps were attributed to relatives, while in the third-party marketplace, 50% of similar apps were attributed to clones. The majority of relatives are apps developed by prolific developers in both marketplaces. We also found that in the third-party market, of the clones that were originally published in the official market, 76% of them are malware.

  • Multi-View 3D CG Image Quality Assessment for Contrast Enhancement Based on S-CIELAB Color Space

    Norifumi KAWABATA  Masaru MIYAO  

     
    PAPER-Image Processing and Video Processing

      Pubricized:
    2017/03/28
      Vol:
    E100-D No:7
      Page(s):
    1448-1462

    Previously, it is not obvious to what extent was accepted for the assessors when we see the 3D image (including multi-view 3D) which the luminance change may affect the stereoscopic effect and assessment generally. We think that we can conduct a general evaluation, along with a subjective evaluation, of the luminance component using both the S-CIELAB color space and CIEDE2000. In this study, first, we performed three types of subjective evaluation experiments for contrast enhancement in an image by using the eight viewpoints parallax barrier method. Next, we analyzed the results statistically by using a support vector machine (SVM). Further, we objectively evaluated the luminance value measurement by using CIEDE2000 in the S-CIELAB color space. Then, we checked whether the objective evaluation value was related to the subjective evaluation value. From results, we were able to see the characteristic relationship between subjective assessment and objective assessment.

  • User and Antenna Joint Selection in Multi-User Large-Scale MIMO Downlink Networks

    Moo-Woong JEONG  Tae-Won BAN  Bang Chul JUNG  

     
    PAPER-Network

      Pubricized:
    2016/11/02
      Vol:
    E100-B No:4
      Page(s):
    529-535

    In this paper, we investigate a user and antenna joint selection problem in multi-user large-scale MIMO downlink networks, where a BS with N transmit antennas serves K users, and N is much larger than K. The BS activates only S(S≤N) antennas for data transmission to reduce hardware cost and computation complexity, and selects the set of users to which data is to be transmitted by maximizing the sum-rate. The optimal user and antenna joint selection scheme based on exhaustive search causes considerable computation complexity. Thus, we propose a new joint selection algorithm with low complexity and analyze the performance of the proposed scheme in terms of sum-rate and complexity. When S=7, N=10, K=5, and SNR=10dB, the sum-rate of the proposed scheme is 5.1% lower than that of the optimal scheme, while the computation complexity of the proposed scheme is reduced by 99.0% compared to that of the optimal scheme.

  • XY-Separable Scale-Space Filtering by Polynomial Representations and Its Applications Open Access

    Gou KOUTAKI  Keiichi UCHIMURA  

     
    INVITED PAPER

      Pubricized:
    2017/01/11
      Vol:
    E100-D No:4
      Page(s):
    645-654

    In this paper, we propose the application of principal component analysis (PCA) to scale-spaces. PCA is a standard method used in computer vision. Because the translation of an input image into scale-space is a continuous operation, it requires the extension of conventional finite matrix-based PCA to an infinite number of dimensions. Here, we use spectral theory to resolve this infinite eigenvalue problem through the use of integration, and we propose an approximate solution based on polynomial equations. In order to clarify its eigensolutions, we apply spectral decomposition to Gaussian scale-space and scale-normalized Laplacian of Gaussian (sLoG) space. As an application of this proposed method, we introduce a method for generating Gaussian blur images and sLoG images, demonstrating that the accuracy of such an image can be made very high by using an arbitrary scale calculated through simple linear combination. Furthermore, to make the scale-space filtering efficient, we approximate the basis filter set using Gaussian lobes approximation and we can obtain XY-Separable filters. As a more practical example, we propose a new Scale Invariant Feature Transform (SIFT) detector.

  • A New Efficient Resource Management Framework for Iterative MapReduce Processing in Large-Scale Data Analysis

    Seungtae HONG  Kyongseok PARK  Chae-Deok LIM  Jae-Woo CHANG  

    This paper has been cancelled due to violation of duplicate submission policy on IEICE Transactions on Information and Systems on September 5, 2019.
     
    PAPER

      Pubricized:
    2017/01/17
      Vol:
    E100-D No:4
      Page(s):
    704-717
    • HTML
    • Errata[Uploaded on March 1,2018]

    To analyze large-scale data efficiently, studies on Hadoop, one of the most popular MapReduce frameworks, have been actively done. Meanwhile, most of the large-scale data analysis applications, e.g., data clustering, are required to do the same map and reduce functions repeatedly. However, Hadoop cannot provide an optimal performance for iterative MapReduce jobs because it derives a result by doing one phase of map and reduce functions. To solve the problems, in this paper, we propose a new efficient resource management framework for iterative MapReduce processing in large-scale data analysis. For this, we first design an iterative job state-machine for managing the iterative MapReduce jobs. Secondly, we propose an invariant data caching mechanism for reducing the I/O costs of data accesses. Thirdly, we propose an iterative resource management technique for efficiently managing the resources of a Hadoop cluster. Fourthly, we devise a stop condition check mechanism for preventing unnecessary computation. Finally, we show the performance superiority of the proposed framework by comparing it with the existing frameworks.

41-60hit(272hit)