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7301-7320hit(20498hit)

  • Multi-Stage Decoding Scheme with Post-Processing for LDPC Codes to Lower the Error Floors

    Beomkyu SHIN  Hosung PARK  Jong-Seon NO  Habong CHUNG  

     
    LETTER-Fundamental Theories for Communications

      Vol:
    E94-B No:8
      Page(s):
    2375-2377

    In this letter, we propose a multi-stage decoding scheme with post-processing for low-density parity-check (LDPC) codes, which remedies the rapid performance degradation in the high signal-to-noise ratio (SNR) range known as error floor. In the proposed scheme, the unsuccessfully decoded words of the previous decoding stage are re-decoded by manipulating the received log-likelihood ratios (LLRs) of the properly selected variable nodes. Two effective criteria for selecting the probably erroneous variable nodes are also presented. Numerical results show that the proposed scheme can correct most of the unsuccessfully decoded words of the first stage having oscillatory behavior, which are regarded as a main cause of the error floor.

  • Inverse Distance Weighting Method Based on a Dynamic Voronoi Diagram for Thermal Reconstruction with Limited Sensor Data on Multiprocessors

    Xin LI  Mengtian RONG  Tao LIU  Liang ZHOU  

     
    PAPER-Electronic Components

      Vol:
    E94-C No:8
      Page(s):
    1295-1301

    With exponentially increasing power densities due to technology scaling and ever increasing demand for performance, chip temperature has become an important issue that limits the performance of computer systems. Typically, it is essential to use a set of on-chip thermal sensors to monitor temperatures during the runtime. The runtime thermal measurements are then employed by dynamic thermal management techniques to manage chip performance appropriately. In this paper, we propose an inverse distance weighting method based on a dynamic Voronoi diagram for the reconstruction of full thermal characterization of integrated circuits with non-uniform thermal sensor placements. Firstly we utilize the proposed method to transform the non-uniformly spaced samples to virtual uniformly spaced data. Then we apply three classical interpolation algorithms to reconstruct the full thermal signals in the uniformly spaced samples mode. To evaluate the effectiveness of our method, we develop an experiment for reconstructing full thermal status of a 16-core processor. Experimental results show that the proposed method significantly outperforms spectral analysis techniques, and can obtain full thermal characterization with an average absolute error of 1.72% using 9 thermal sensors per core.

  • Modeling of Electric Vehicle Charging Systems in Communications Enabled Smart Grids

    Seung Jun BAEK  Daehee KIM  Seong-Jun OH  Jong-Arm JUN  

     
    LETTER-Information Network

      Vol:
    E94-D No:8
      Page(s):
    1708-1711

    We consider a queuing model with applications to electric vehicle (EV) charging systems in smart grids. We adopt a scheme where an Electric Service Company (ESCo) broadcasts a one bit signal to EVs, possibly indicating 'on-peak' periods during which electricity cost is high. EVs randomly suspend/resume charging based on the signal. To model the dynamics of EVs we propose an M/M/∞ queue with random interruptions, and analyze the dynamics using time-scale decomposition. There exists a trade-off: one may postpone charging activity to 'off-peak' periods during which electricity cost is cheaper, however this incurs extra delay in completion of charging. Using our model we characterize achievable trade-offs between the mean cost and delay perceived by users. Next we consider a scenario where EVs respond to the signal based on the individual loads. Simulation results show that peak electricity demand can be reduced if EVs carrying higher loads are less sensitive to the signal.

  • Nonparametric Regression Method Based on Orthogonalization and Thresholding

    Katsuyuki HAGIWARA  

     
    PAPER-Artificial Intelligence, Data Mining

      Vol:
    E94-D No:8
      Page(s):
    1610-1619

    In this paper, we consider a nonparametric regression problem using a learning machine defined by a weighted sum of fixed basis functions, where the number of basis functions, or equivalently, the number of weights, is equal to the number of training data. For the learning machine, we propose a training scheme that is based on orthogonalization and thresholding. On the basis of the scheme, vectors of basis function outputs are orthogonalized and coefficients of the orthogonalized vectors are estimated instead of weights. The coefficient is set to zero if it is less than a predetermined threshold level assigned component-wise to each coefficient. We then obtain the resulting weight vector by transforming the thresholded coefficients. In this training scheme, we propose asymptotically reasonable threshold levels to distinguish contributed components from unnecessary ones. To see how this works in a simple case, we derive an upper bound for the generalization error of the training scheme with the given threshold levels. It tells us that an increase in the generalization error is of O(log n/n) when there is a sparse representation of a target function in an orthogonal domain. In implementing the training scheme, eigen-decomposition or the Gram–Schmidt procedure is employed for orthogonalization, and the corresponding training methods are referred to as OHTED and OHTGS. Furthermore, modified versions of OHTED and OHTGS, called OHTED2 and OHTGS2 respectively, are proposed for reduced estimation bias. On real benchmark datasets, OHTED2 and OHTGS2 are found to exhibit relatively good generalization performance. In addition, OHTGS2 is found to be obtain a sparse representation of a target function in terms of the basis functions.

  • Low Complexity Algorithms for Multi-Cell Joint Channel Estimation in TDD-CDMA Systems

    Peng XUE  Jae Hyun PARK  Duk Kyung KIM  

     
    LETTER-Wireless Communication Technologies

      Vol:
    E94-B No:8
      Page(s):
    2431-2434

    In this letter, we propose two low complexity algorithms for least square (LS) and minimum mean square error (MMSE) based multi-cell joint channel estimation (MJCE). The algorithm for LS-MJCE achieves the same complexity and mean square error (MSE) performance as the previously proposed most efficient algorithm, while the algorithm for MMSE-MJCE is superior to the conventional ones, in terms of either complexity or MSE performance.

  • Class-Distance-Based Discriminant Analysis and Its Application to Supervised Automatic Age Estimation

    Tetsuji OGAWA  Kazuya UEKI  Tetsunori KOBAYASHI  

     
    PAPER-Image Recognition, Computer Vision

      Vol:
    E94-D No:8
      Page(s):
    1683-1689

    We propose a novel method of supervised feature projection called class-distance-based discriminant analysis (CDDA), which is suitable for automatic age estimation (AAE) from facial images. Most methods of supervised feature projection, e.g., Fisher discriminant analysis (FDA) and local Fisher discriminant analysis (LFDA), focus on determining whether two samples belong to the same class (i.e., the same age in AAE) or not. Even if an estimated age is not consistent with the correct age in AAE systems, i.e., the AAE system induces error, smaller errors are better. To treat such characteristics in AAE, CDDA determines between-class separability according to the class distance (i.e., difference in ages); two samples with similar ages are imposed to be close and those with spaced ages are imposed to be far apart. Furthermore, we propose an extension of CDDA called local CDDA (LCDDA), which aims at handling multimodality in samples. Experimental results revealed that CDDA and LCDDA could extract more discriminative features than FDA and LFDA.

  • Drastic Anomaly Detection in Video Using Motion Direction Statistics

    Chang LIU  Guijin WANG  Wenxin NING  Xinggang LIN  

     
    PAPER-Image Recognition, Computer Vision

      Vol:
    E94-D No:8
      Page(s):
    1700-1707

    A novel approach for detecting anomaly in visual surveillance system is proposed in this paper. It is composed of three parts: (a) a dense motion field and motion statistics method, (b) motion directional PCA for feature dimensionality reduction, (c) an improved one-class SVM for one-class classification. Experiments demonstrate the effectiveness of the proposed algorithm in detecting abnormal events in surveillance video, while keeping a low false alarm rate. Our scheme works well in complicated situations that common tracking or detection modules cannot handle.

  • Probabilistic Broadcast-Based Cache Invalidation Scheme for Location Dependent Data in Mobile Environments

    Shigeaki TAGASHIRA  Yutaka KAMINISHI  Yutaka ARAKAWA  Teruaki KITASUKA  Akira FUKUDA  

     
    PAPER-Data Engineering, Web Information Systems

      Vol:
    E94-D No:8
      Page(s):
    1590-1601

    Data caching is widely known as an effective power-saving technique, in which mobile devices use local caches instead of original data placed on a server, in order to reduce the power consumption necessary for network accesses. In such data caching, a cache invalidation mechanism is important in preventing these devices from unintentionally accessing invalid data. In this paper, we propose a broadcast-based protocol for cache invalidation in a location-aware system. The proposed protocol is designed to reduce the access time required for obtaining necessary invalidation reports through broadcast media and to avoid client-side sleep fragmentation while retrieving the reports. In the proposed protocol, a Bloom filter is used as the data structure of an invalidation report, in order to probabilistically check the invalidation of caches. Furthermore, we propose three broadcast scheduling methods that are intended to achieve flexible broadcasting structured by the Bloom filter: fragmentation avoidance scheduling method (FASM), metrics balancing scheduling method (MBSM), and minimizing access time scheduling method (MASM). The broadcast schedule is arranged for consecutive accesses to geographically neighboring invalidation reports. In addition, the effectiveness of the proposed methods is evaluated by simulation. The results indicate that the MBSM and MASM achieve a high rate of performance scheduling. Compared to the FASM, the MBSM reduces the access time by 34%, while the fragmentations on the resultant schedule increase by 40%, and the MASM reduces the access time by 40%, along with an 85% increase in the number of fragmentations.

  • Partial Derivative Guidance for Weak Classifier Mining in Pedestrian Detection

    Chang LIU  Guijin WANG  Chunxiao LIU  Xinggang LIN  

     
    LETTER-Image Recognition, Computer Vision

      Vol:
    E94-D No:8
      Page(s):
    1721-1724

    Boosting over weak classifiers is widely used in pedestrian detection. As the number of weak classifiers is large, researchers always use a sampling method over weak classifiers before training. The sampling makes the boosting process harder to reach the fixed target. In this paper, we propose a partial derivative guidance for weak classifier mining method which can be used in conjunction with a boosting algorithm. Using weak classifier mining method makes the sampling less degraded in the performance. It has the same effect as testing more weak classifiers while using acceptable time. Experiments demonstrate that our algorithm can process quicker than [1] algorithm in both training and testing, without any performance decrease. The proposed algorithms is easily extending to any other boosting algorithms using a window-scanning style and HOG-like features.

  • Constraints on the Neighborhood Size in LLE

    Zhengming MA  Jing CHEN  Shuaibin LIAN  

     
    PAPER-Pattern Recognition

      Vol:
    E94-D No:8
      Page(s):
    1636-1640

    Locally linear embedding (LLE) is a well-known method for nonlinear dimensionality reduction. The mathematical proof and experimental results presented in this paper show that the neighborhood sizes in LLE must be smaller than the dimensions of input data spaces, otherwise LLE would degenerate from a nonlinear method for dimensionality reduction into a linear method for dimensionality reduction. Furthermore, when the neighborhood sizes are larger than the dimensions of input data spaces, the solutions to LLE are not unique. In these cases, the addition of some regularization method is often proposed. The experimental results presented in this paper show that the regularization method is not robust. Too large or too small regularization parameters cannot unwrap S-curve. Although a moderate regularization parameters can unwrap S-curve, the relative distance in the input data will be distorted in unwrapping. Therefore, in order to make LLE play fully its advantage in nonlinear dimensionality reduction and avoid multiple solutions happening, the best way is to make sure that the neighborhood sizes are smaller than the dimensions of input data spaces.

  • LILES System: Guiding and Analyzing Cognitive Visualization in Beginning and Intermediate Kanji Learners

    Luis INOSTROZA CUEVA  Masao MUROTA  

     
    PAPER-Educational Technology

      Vol:
    E94-D No:7
      Page(s):
    1449-1458

    This paper provides conceptual and experimental analysis of a new approach in the study of kanji, our “Learner's Visualization (LV) Approach”. In a previous study we found that the LV Approach assists beginning learners in significantly updating their personal kanji deconstruction visualization. Additionally, in another study our findings provided evidence that beginning learners also receive a significant impact in the ability to acquire vocabulary. In this study, our research problem examines how beginning and intermediate students use visualization to cognitively deconstruct (divide) kanji in different ways, and how this affects their learning progress. We analyze the cognitive differences in how kanji learners explore and deconstruct novel kanji while using the LV Approach and how these differences affect their learning process while using the LV Approach. During the learning experience, our LILES System (Learner's Introspective Latent Envisionment System), based on the LV Approach, guides learners to choose from a set of possible “kanji deconstruction layouts” (layouts showing different ways in which a given kanji can be divided). The system then assists learners in updating their “kanji deconstruction level” (the average number of parts they visualize within kanji according to their current abilities). Statistical analysis based on achieved performance was conducted. The analysis of our results proves that there are cognitive differences: beginners deconstruct kanji into more parts (“blocks”) than intermediate learners do, and while both improve their kanji deconstruction scores, there is a more significant change in “kanji deconstruction level” in beginners. However, it was also found that intermediate learners benefit more in “kanji retention score” compared with beginners. Suggestions for further research are provided.

  • Re-Scheduling of Unit Commitment Based on Customers' Fuzzy Requirements for Power Reliability

    Bo WANG  You LI  Junzo WATADA  

     
    PAPER-Fundamentals of Information Systems

      Vol:
    E94-D No:7
      Page(s):
    1378-1385

    The development of the electricity market enables us to provide electricity of varied quality and price in order to fulfill power consumers' needs. Such customers choices should influence the process of adjusting power generation and spinning reserve, and, as a result, change the structure of a unit commitment optimization problem (UCP). To build a unit commitment model that considers customer choices, we employ fuzzy variables in this study to better characterize customer requirements and forecasted future power loads. To measure system reliability and determine the schedule of real power generation and spinning reserve, fuzzy Value-at-Risk (VaR) is utilized in building the model, which evaluates the peak values of power demands under given confidence levels. Based on the information obtained using fuzzy VaR, we proposed a heuristic algorithm called local convergence-averse binary particle swarm optimization (LCA-PSO) to solve the UCP. The proposed model and algorithm are used to analyze several test systems. Comparisons between the proposed algorithm and the conventional approaches show that the LCA-PSO performs better in finding the optimal solutions.

  • A 65 nm 1.2 V 7-bit 1 GSPS Folding-Interpolation A/D Converter with a Digitally Self-Calibrated Vector Generator

    Daeyun KIM  Minkyu SONG  

     
    PAPER-Electronic Circuits

      Vol:
    E94-C No:7
      Page(s):
    1199-1205

    In this paper, a 65 nm 1.2 V 7-bit 1GSPS folding-interpolation A/D converter with a digitally self-calibrated vector generator is proposed. The folding rate is 2 and the interpolation rate is 8. A self-calibrated vector generation circuit with a feedback loop and a recursive digital code inspection is described. The circuit reduces the variation of the offset voltage caused by process mismatches, parasitic resistors, and parasitic capacitances. The chip has been fabricated with a 65 nm 1-poly 6-metal CMOS technology. The effective chip area is 0.87 mm2 and the power consumption is about 110 mW with a 1.2 V power supply. The measured SNDR is about 39.1 dB when the input frequency is 250 MHz at a 1 GHz sampling frequency. The measured SNDR is drastically improved in comparison with the same ADC without any calibration.

  • Differential Behavior Equivalent Classes of Shift Register Equivalents for Secure and Testable Scan Design

    Katsuya FUJIWARA  Hideo FUJIWARA  Hideo TAMAMOTO  

     
    PAPER-Dependable Computing

      Vol:
    E94-D No:7
      Page(s):
    1430-1439

    It is important to find an efficient design-for-testability methodology that satisfies both security and testability, although there exists an inherent contradiction between security and testability for digital circuits. In our previous work, we reported a secure and testable scan design approach by using extended shift registers that are functionally equivalent but not structurally equivalent to shift registers, and showed a security level by clarifying the cardinality of those classes of shift register equivalents (SR-equivalents). However, SR-equivalents are not always secure for scan-based side-channel attacks. In this paper, we consider a scan-based differential-behavior attack and propose several classes of SR-equivalent scan circuits using dummy flip-flops in order to protect the scan-based differential-behavior attack. To show the security level of those SR-equivalent scan circuits, we introduce a differential-behavior equivalent relation and clarify the number of SR-equivalent scan circuits, the number of differential-behavior equivalent classes and the cardinality of those equivalent classes.

  • Enhanced DV-Hop Algorithm with Reduced Hop-Size Error in Ad Hoc Networks

    Sang-Woo LEE  Dong-Yul LEE  Chae-Woo LEE  

     
    LETTER-Network

      Vol:
    E94-B No:7
      Page(s):
    2130-2132

    DV-Hop algorithm produces errors in location estimations due to inaccurate hop size. We propose a novel localization scheme based on DV-Hop to improve positioning accuracy with least error hop sizes of anchors and average hop sizes of unknowns. The least error hop size of an anchor minimizes its location error, but it may be far small or large. To cope with this inconsistent hop size, each unknown node calculates its average hop size with hop sizes from anchors. Simulation results show that the proposed algorithm outperforms the DV-Hop algorithm in location estimations.

  • Active Noise Control System for Reducing MR Noise

    Masafumi KUMAMOTO  Masahiro KIDA  Ryotaro HIRAYAMA  Yoshinobu KAJIKAWA  Toru TANI  Yoshimasa KURUMI  

     
    PAPER-Engineering Acoustics

      Vol:
    E94-A No:7
      Page(s):
    1479-1486

    We propose an active noise control (ANC) system for reducing periodic noise generated in a high magnetic field such as noise generated from magnetic resonance imaging (MRI) devices (MR noise). The proposed ANC system utilizes optical microphones and piezoelectric loudspeakers, because specific acoustic equipment is required to overcome the high-field problem, and consists of a head-mounted structure to control noise near the user's ears and to compensate for the low output of the piezoelectric loudspeaker. Moreover, internal model control (IMC)-based feedback ANC is employed because the MR noise includes some periodic components and is predictable. Our experimental results demonstrate that the proposed ANC system (head-mounted structure) can significantly reduce MR noise by approximately 30 dB in a high field in an actual MRI room even if the imaging mode changes frequently.

  • Detection of Retinal Blood Vessels Based on Morphological Analysis with Multiscale Structure Elements and SVM Classification

    Pil Un KIM  Yunjung LEE  Sanghyo WOO  Chulho WON  Jin Ho CHO  Myoung Nam KIM  

     
    LETTER-Biological Engineering

      Vol:
    E94-D No:7
      Page(s):
    1519-1522

    Since retina blood vessels (RBV) are a major factor in ophthalmological diagnosis, it is essential to detect RBV from a fundus image. In this letter, we proposed the detection method of RBV using a morphological analysis and support vector machine classification. The proposed RBV detection method consists of three strategies: pre-processing, features extraction and classification. In pre-processing, noises were reduced and RBV were enhanced by anisotropic diffusion filtering and illumination equalization. Features were extracted by using the image intensity and morphology of RBV. And a support vector machine (SVM) classification algorithm was used to detect RBV. The proposed RBV detection method was simulated and validated by using the DRIVE database. The averages of accuracy and TPR are 0.94 and 0.78, respectively. Moreover, by comparison, we confirmed that the proposed RBV detection method detected RBV better than the recent RBV detections methods.

  • Phonetically Balanced Text Corpus Design Using a Similarity Measure for a Stereo Super-Wideband Speech Database

    Yoo Rhee OH  Yong Guk KIM  Mina KIM  Hong Kook KIM  Mi Suk LEE  Hyun Joo BAE  

     
    PAPER-Speech and Hearing

      Vol:
    E94-D No:7
      Page(s):
    1459-1466

    In this paper, we propose a text corpus design method for a Korean stereo super-wideband speech database. Since a small-sized text corpus for speech coding is generally required for speech coding, the corpus should be designed to comply with the pronunciation behavior of natural conversation in order to ensure efficient speech quality tests. To this end, the proposed design method utilizes a similarity measure between the phoneme distribution occurring from natural conversation and that from the designed text corpus. In order to achieve this goal, we first collect and refine text data from textbooks and websites. Next, a corpus is designed from the refined text data based on the similarity measure to compare phoneme distributions. We then construct a Korean stereo super-wideband speech (K-SW) database using the designed text corpus, where the recording environment is set to meet the conditions defined by ITU-T. Finally, the subjective quality of the K-SW database is evaluated using an ITU-T super-wideband codec in order to demonstrate that the K-SW database is useful for developing and evaluating super-wideband codecs.

  • Synchronous Demodulation of Coherent 16-QAM with Feedforward Carrier Recovery Open Access

    Ali AL-BERMANI  Christian WORDEHOFF  Sebastian HOFFMANN  Timo PFAU  Ulrich RUCKERT  Reinhold NOE  

     
    INVITED PAPER

      Vol:
    E94-B No:7
      Page(s):
    1794-1800

    We present the recovery of 2.5 Gb/s synchronous 16-point quadrature amplitude modulation data in real-time for an linewidth-times-symbol-duration ratio of 0.00048 after transmission over 1.6 km standard single mode fiber.

  • Image Inpainting Based on Adaptive Total Variation Model

    Zhaolin LU  Jiansheng QIAN  Leida LI  

     
    LETTER-Image

      Vol:
    E94-A No:7
      Page(s):
    1608-1612

    In this letter, a novel adaptive total variation (ATV) model is proposed for image inpainting. The classical TV model is a partial differential equation (PDE)-based technique. While the TV model can preserve the image edges well, it has some drawbacks, such as staircase effect in the inpainted image and slow convergence rate. By analyzing the diffusion mechanism of TV model and introducing a new edge detection operator named difference curvature, we propose a novel ATV inpainting model. The proposed ATV model can diffuse the image information smoothly and quickly, namely, this model not only eliminates the staircase effect but also accelerates the convergence rate. Experimental results demonstrate the effectiveness of the proposed scheme.

7301-7320hit(20498hit)