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7021-7040hit(42807hit)

  • Uniform Lying Helix of Cholesteric Liquid Crystals Aligned by means of Slit Coater Method with Electric Treatment Open Access

    Munehiro KIMURA  Naoto ENDO  

     
    INVITED PAPER

      Vol:
    E99-C No:11
      Page(s):
    1240-1243

    A Uniform Lying Helix (ULH) liquid crystal device (LCD) fabricated by utilizing the characteristics of shear flow alignment as well as dielectric anisotropy was demonstrated. Cholesteric liquid crystals with a short helical pitch can exhibit an electric field-induced tilt. These experimental results indicate that it is possible to realize a high-speed response flexible LCD using plastic substrates.

  • Automatic Retrieval of Action Video Shots from the Web Using Density-Based Cluster Analysis and Outlier Detection

    Nga Hang DO  Keiji YANAI  

     
    PAPER-Image Processing and Video Processing

      Pubricized:
    2016/07/21
      Vol:
    E99-D No:11
      Page(s):
    2788-2795

    In this paper, we introduce a fully automatic approach to construct action datasets from noisy Web video search results. The idea is based on combining cluster structure analysis and density-based outlier detection. For a specific action concept, first, we download its Web top search videos and segment them into video shots. We then organize these shots into subsets using density-based hierarchy clustering. For each set, we rank its shots by their outlier degrees which are determined as their isolatedness with respect to their surroundings. Finally, we collect high ranked shots as training data for the action concept. We demonstrate that with action models trained by our data, we can obtain promising precision rates in the task of action classification while offering the advantage of fully automatic, scalable learning. Experiment results on UCF11, a challenging action dataset, show the effectiveness of our method.

  • Distributed Decision Fusion over Nonideal Channels Using Scan Statistics

    Junhai LUO  Renqian ZOU  

     
    PAPER-Digital Signal Processing

      Vol:
    E99-A No:11
      Page(s):
    2019-2026

    Although many approaches about ideal channels have been proposed in previous researches, few authors considered the situation of nonideal communication links. In this paper, we study the problem of distributed decision fusion over nonideal channels by using the scan statistics. In order to obtain the fusion rule under nonideal channels, we set up the nonideal channels model with the modulation error, noise and signal attenuation. Under this model, we update the fusion rule by using the scan statstics. We firstly consider the fusion rule when sensors are distributed in grid, then derive the expressions of the detection probability and false alarm probability when sensors follow an uniform distribution. Extensive simulations are conducted in order to investigate the performance of our fusion rule and the influence of signal-noise ratio (SNR) on the detection and false alarm probability. These simulations show that the theoretical values of the global detection probability and the global false alarm probability are close to the experimental results, and the fusion rule also has high performance at the high SNR region. But there are some further researches need to do for solving the large computational complexity.

  • IIR Filter Design Using Multi-Swarm PSO Based on Particle Reallocation Strategy

    Haruna AIMI  Kenji SUYAMA  

     
    PAPER-Digital Signal Processing

      Vol:
    E99-A No:11
      Page(s):
    1947-1954

    In this paper, we study a novel method to avoid a local minimum stagnation in the design problem of IIR (Infinite Impulse Response) filters using PSO (Particle Swarm Optimization). Although PSO is appropriate to solve nonlinear optimization problems, it is reported that a local minimum stagnation occurs due to a strong intensification of particles during the search. Then, multi-swarm PSO based on the particle reallocation strategy is proposed to avoid the local minimum stagnation. In this method, a reallocation space is determined by using some global bests. In this paper, the relationship between the number of swarms and the best value of design error is shown and the effectiveness of the proposed method is shown through several design examples.

  • Flexible Ultra-Thin Liquid Crystal Devices Using Coat-Debond Polyimide Substrates and Etched Post Spacers Open Access

    Yuusuke OBONAI  Yosei SHIBATA  Takahiro ISHINABE  Hideo FUJIKAKE  

     
    INVITED PAPER

      Vol:
    E99-C No:11
      Page(s):
    1228-1233

    We developed flexible LC devices using coat-debond polyimide substrates with a low birefringence and etched post spacers, and clarified that flexible LCDs using post spacers with small spacer distance have a high flexibility without degradation of the image quality. This result ensured the feasibility of flexible LCDs using coat-debond method.

  • Evaluation of Adaptive Satellite Power Control Method Using Rain Radar Data

    Peeramed CHODKAVEEKITYADA  Hajime FUKUCHI  

     
    PAPER-Satellite Communications

      Pubricized:
    2016/06/01
      Vol:
    E99-B No:11
      Page(s):
    2450-2457

    Rain attenuation can drastically impact the service availability of satellite communication, especially in the higher frequency bands above 20 GHz, such as the Ka-band. Several countermeasures, including site and time diversity, have been proposed to maintain satellite link service. In this paper, we evaluate the performance of a power boost beam method, which is an adaptive satellite power control technology based on using rain radar data obtained throughout Japan to forecast the power margin. Boost beam analysis is considered for different beam sizes (50, 100, 150, and 200km) and beam numbers (1-4 beams) for a total of 16 cases. Moreover, we used a constant boost power corresponding to the rainfall rate of 20mm/h. The obtained results show that in comparison to the case with no boost, the effective rain intensity in each boost case was reduced.

  • Control of Morphology and Alignment of Liquid Crystal Droplets in Molecular-Aligned Polymer for Substrate-Free Displays Open Access

    Daisuke SASAKI  Yosei SHIBATA  Takahiro ISHINABE  Hideo FUJIKAKE  

     
    INVITED PAPER

      Vol:
    E99-C No:11
      Page(s):
    1234-1239

    We have proposed composite films composed of a molecular-aligned polymer and liquid crystal (LC) for substrate-free liquid crystal displays with high-contrast images. We successfully controlled the molecular alignment of the LC and formed molecular-aligned LC droplets in the polymer by controlling the fluidity of the LC/monomer mixture and the curing rate of the monomer.

  • Interference Cancellation Employing Replica Selection Algorithm and Neural Network Power Control for MIMO Small Cell Networks

    Michael Andri WIJAYA  Kazuhiko FUKAWA  Hiroshi SUZUKI  

     
    PAPER-Wireless Communication Technologies

      Pubricized:
    2016/06/02
      Vol:
    E99-B No:11
      Page(s):
    2414-2425

    In a network with dense deployment of multiple-input multiple-output (MIMO) small cells, coverage overlap between the small cells produces intercell-interference, which degrades system capacity. This paper proposes an intercell-interference management (IIM) scheme that aims to maximize system capacity by using both power control for intercell-interference coordination (ICIC) on the transmitter side and interference cancellation (IC) on the receiver side. The power control determines transmit power levels at the base stations (BSs) by employing a neural network (NN) algorithm over the backhaul. To further improve the signal to interference plus noise ratio (SINR), every user terminal (UT) employs a multiuser detector (MUD) as IC. The MUD detects not only the desired signals, but also some interfering signals to be cancelled from received signals. The receiver structure consists of branch metric generators (BMGs) and MUD. BMGs suppress residual interference and noise in the received signals by whitening matched filters (WMFs), and then generate metrices by using the WMFs' outputs and symbol candidates that the MUD provides. On the basis of the metrices, the MUD detects both the selected interfering signals and the desired signals. In addition, the MUD determines which interfering signals are detected by an SINR based replica selection algorithm. Computer simulations demonstrate that the SINR based replica selection algorithm, which is combined with channel encoders and packet interleavers, can significantly improve the system bit error rate (BER) and that combining IC at the receiver with NN power control at the transmitter can considerably increase the system capacity. Furthermore, it is shown that choosing the detected interfering signals by the replica selection algorithm can obtain system capacity with comparable loss and less computational complexity compared to the conventional greedy algorithm.

  • Classifying Insects from SEM Images Based on Optimal Classifier Selection and D-S Evidence Theory

    Takahiro OGAWA  Akihiro TAKAHASHI  Miki HASEYAMA  

     
    PAPER-Image

      Vol:
    E99-A No:11
      Page(s):
    1971-1980

    In this paper, an insect classification method using scanning electron microphotographs is presented. Images taken by a scanning electron microscope (SEM) have a unique problem for classification in that visual features differ from each other by magnifications. Therefore, direct use of conventional methods results in inaccurate classification results. In order to successfully classify these images, the proposed method generates an optimal training dataset for constructing a classifier for each magnification. Then our method classifies images using the classifiers constructed by the optimal training dataset. In addition, several images are generally taken by an SEM with different magnifications from the same insect. Therefore, more accurate classification can be expected by integrating the results from the same insect based on Dempster-Shafer evidence theory. In this way, accurate insect classification can be realized by our method. At the end of this paper, we show experimental results to confirm the effectiveness of the proposed method.

  • Object Detection Based on Image Blur Evaluated by Discrete Fourier Transform and Haar-Like Features

    Ryusuke MIYAMOTO  Shingo KOBAYASHI  

     
    PAPER-Image

      Vol:
    E99-A No:11
      Page(s):
    1990-1999

    In general, in-focus images are used in visual object detection because image blur is considered as a factor reducing detection accuracy. However, in-focus images make it difficult to separate target objects from background images, because of that, visual object detection becomes a hard task. Background subtraction and inter-frame difference are famous schemes for separating target objects from background but they have a critical disadvantage that they cannot be used if illumination changes or the point of view moves. Considering these problems, the authors aim to improve detection accuracy by using images with out-of-focus blur obtained from a camera with a shallow depth of field. In these images, it is expected that target objects become in-focus and other regions are blurred. To enable visual object detection based on such image blur, this paper proposes a novel scheme using DFT-based feature extraction. The experimental results using synthetic images including, circle, star, and square objects as targets showed that a classifier constructed by the proposed scheme showed 2.40% miss rate at 0.1 FPPI and perfect detection has been achieved for detection of star and square objects. In addition, the proposed scheme achieved perfect detection of humans in natural images when the upper half of the human body was trained. The accuracy of the proposed scheme is better than the Filtered Channel Features, one of the state-of-the-art schemes for visual object detection. Analyzing the result, it is convincing that the proposed scheme is very feasible for visual object detection based on image blur.

  • Harmonic-Based Robust Voice Activity Detection for Enhanced Low SNR Noisy Speech Recognition System

    Po-Yi SHIH  Po-Chuan LIN  Jhing-Fa WANG  

     
    PAPER-Speech and Hearing

      Vol:
    E99-A No:11
      Page(s):
    1928-1936

    This paper describes a novel harmonic-based robust voice activity detection (H-RVAD) method with harmonic spectral local peak (HSLP) feature. HSLP is extracted by spectral amplitude analysis between the adjacent formants, and such characteristic can be used to identify and verify audio stream containing meaningful human speech accurately in low SNR environment. And, an enhanced low SNR noisy speech recognition system framework with wakeup module, speech recognition module and confirmation module is proposed. Users can determine or reject the system feedback while a recognition result was given in the framework, to prevent any chance that the voiced noise misleads the recognition result. The H-RVAD method is evaluated by the AURORA2 corpus in eight types of noise and three SNR levels and increased overall average performance from 4% to 20%. In home noise, the performance of H-RVAD method can be performed from 4% to 14% sentence recognition rate in average.

  • Improved Method of Detecting Data in Data-Embedded Printed Image Considering Mobile Devices

    Aya HIYAMA  Mitsuji MUNEYASU  

     
    LETTER-Image

      Vol:
    E99-A No:11
      Page(s):
    2000-2002

    In this paper, we propose an improved method of embedding and detecting data in a printed image using a camera of a mobile device. The proposed method is based on the data diffusion method. We discuss several problems in the conventional lens distortion correction method. In addition, the possibility of using multiple captured images by employing a motion-image-capturing technique is also examined. A method of selecting captured images that are expected to obtain a high detection rate is also proposed. From the experimental results, it is shown that the proposed method is effective for improving data detection.

  • Exponent-Based Partitioning Broadcast Protocol for Emergency Message Dissemination in Vehicular Networks

    Dun CAO  Zhengbao LEI  Baofeng JI  Chunguo LI  

     
    PAPER-Intelligent Transport System

      Vol:
    E99-A No:11
      Page(s):
    2075-2083

    We propose an exponent-based partitioning broadcast protocol (EPBP) to promise the prompt dissemination of emergency message (EM) in vehicular networks. EPBP divides the communication range into segments with different widths iteratively. The width varies corresponding to the exponential curve. The design makes the farther no-empty segment thinner, as a result of which the collision rate of candidates' contention for the relay node decreases and the one-hop message progress increases efficiently. In addition, we adjust the interval of back-off timers to avoid the spurious forwarding problem, and develop more accurate analytical models for the performance. Our simulation verifies these models and show a significant increase of EPBP compared with the state-of-the-art protocols. EM dissemination speed can be improved as 55.94% faster in dense vehicle networks, and packet delivery ratio has risen to higher than 99.99%.

  • Analysis on Buffer Occupancy of Quantized Congestion Notification in Data Center Networks

    Chang RUAN  Jianxin WANG  Jiawei HUANG  Wanchun JIANG  

     
    PAPER-Network

      Pubricized:
    2016/06/01
      Vol:
    E99-B No:11
      Page(s):
    2361-2372

    In data center networks, Quantized Congestion Notification (QCN) has been ratified as the standard congestion management mechanism in the link layer. Since QCN nonlinearly switches between the rate increase and decrease stages, it is very difficult to understand QCN in depth and provide theoretical guidelines on setting the buffer size of the QCN switch. This paper gives an explicit formula for the boundary of buffer occupancy of the QCN switch. Specifically, based on the fluid model of QCN, we first derive the uniformly asymptotic stability condition of the QCN system. Then, under the condition that QCN is uniformly asymptotically stable, we analyze the buffer occupancy of the QCN switch theoretically and show that the classic rule-of-thumb for buffer sizing is not suitable for QCN. Finally, simulations validate the accuracy of our theoretical results.

  • Measurement Matrices Construction for Compressed Sensing Based on Finite Field Quasi-Cyclic LDPC Codes

    Hua XU  Hao YANG  Wenjuan SHI  

     
    PAPER-Fundamental Theories for Communications

      Pubricized:
    2016/06/16
      Vol:
    E99-B No:11
      Page(s):
    2332-2339

    Measurement matrix construction is critically important to signal sampling and reconstruction for compressed sensing. From a practical point of view, deterministic construction of the measurement matrix is better than random construction. In this paper, we propose a novel deterministic method to construct a measurement matrix for compressed sensing, CS-FF (compressed sensing-finite field) algorithm. For this proposed algorithm, the constructed measurement matrix is from the finite field Quasi-cyclic Low Density Parity Check (QC-LDPC) code and thus it has quasi-cyclic structure. Furthermore, we construct three groups of measurement matrices. The first group matrices are the proposed matrix and other matrices including deterministic construction matrices and random construction matrices. The other two group matrices are both constructed by our method. We compare the recovery performance of these matrices. Simulation results demonstrate that the recovery performance of our matrix is superior to that of the other matrices. In addition, simulation results show that the compression ratio is an important parameter to analyse and predict the recovery performance of the proposed measurement matrix. Moreover, these matrices have less storage requirement than that of a random one, and they achieve a better trade-off between complexity and performance. Therefore, from practical perspective, the proposed scheme is hardware friendly and easily implemented, and it is suitable to compressed sensing for its quasi-cyclic structure and good recovery performance.

  • Enhanced Non-Local Means Denoising Algorithm Using Weighting Function with Switching Norm

    JongGeun OH  DongYoung KIM  Min-Cheol HONG  

     
    LETTER-Image

      Vol:
    E99-A No:11
      Page(s):
    2089-2094

    This letter introduces a non-local means (NLM) denoising algorithm that uses a weight function based on a switching norm. The noise level and local activity are incorporated into the NLM denoising algorithm which enhances performance. This is done by selecting a norm among l1, l2, and l4 norms to determine a weighting function. The experimental results show the capability of the proposed algorithm. In addition, the proposed algorithm is verified as effective for enhancing the performance of other NLM algorithms.

  • Improving Face Image Representation Using Tangent Vectors and the L1 Norm

    Zhicheng LU  Zhizheng LIANG  Lei ZHANG  Jin LIU  Yong ZHOU  

     
    LETTER-Image

      Vol:
    E99-A No:11
      Page(s):
    2099-2103

    Inspired from the idea of data representation in manifold learning, we derive a novel model which combines the original training images and their tangent vectors to represent each image in the testing set. Different from the previous methods, the L1 norm is used to control the reconstruction error. Considering the fact that the objective function in the proposed model is non-smooth, we utilize the majorization minimization (MM) method to solve the proposed optimization model. It is interesting to note that at each iteration a quadratic optimization problem is formulated and its analytical solution can be achieved, thereby making the proposed algorithm effective. Extensive experiments on face images demonstrate that our method achieves better performance than some previous methods.

  • Small-World-Network Model Based Routing Method for Wireless Sensor Networks

    Nobuyoshi KOMURO  Sho MOTEGI  Kosuke SANADA  Jing MA  Zhetao LI  Tingrui PEI  Young-June CHOI  Hiroo SEKIYA  

     
    PAPER

      Vol:
    E99-B No:11
      Page(s):
    2315-2322

    This paper proposes a Watts and Strogatz-model based routing method for wireless sensor network along with link-exchange operation. The proposed routing achieves low data-collection delay because of hub-node existence. By applying the link exchanges, node with low remaining battery level can escape from a hub node. Therefore, the proposed routing method achieves the fair battery-power consumptions among sensor nodes. It is possible for the proposed method to prolong the network lifetime with keeping the small-world properties. Simulation results show the effectiveness of the proposed method.

  • Transient Response of Reference Modified Digital PID Control DC-DC Converters with Neural Network Prediction

    Hidenori MARUTA  Daiki MITSUTAKE  Masashi MOTOMURA  Fujio KUROKAWA  

     
    PAPER-Energy in Electronics Communications

      Pubricized:
    2016/06/17
      Vol:
    E99-B No:11
      Page(s):
    2340-2350

    This paper presents a novel control method based on predictions of a neural network in coordination with a conventional PID control to improve transient characteristics of digitally controlled switching dc-dc converters. Power supplies in communication systems require to achieve a superior operation for electronic equipment installed to them. Especially, it is important to improve transient characteristics in any required conditions since they affect to the operation of power supplies. Therefore, dc-dc converters in power supplies need a superior control method which can suppress transient undershoot and overshoot of output voltage. In the presented method, the neural network is trained to predict the output voltage and is adopted to modify the reference value in the PID control to reduce the difference between the output voltage and its desired one in the transient state. The transient characteristics are gradually improved as the training procedure of the neural network is proceeded repetitively. Furthermore, the timing and duration of neural network control are also investigated and devised since the time delay, which is one of the main issue in digital control methods, affects to the improvement of transient characteristics. The repetitive training and duration adjustment of the neural network are performed simultaneously to obtain more improvement of the transient characteristics. From simulated and experimental results, it is confirmed that the presented method realizes superior transient characteristics compared to the conventional PID control.

  • Proposal for Designing Method of Radio Transmission Range to Improve Both Power Saving and Communication Reachability Based on Target Problem

    Ryo HAMAMOTO  Chisa TAKANO  Hiroyasu OBATA  Masaki AIDA  Kenji ISHIDA  

     
    PAPER

      Vol:
    E99-B No:11
      Page(s):
    2271-2279

    Geocast communication provides efficient group communication services to distribute information to terminals that exist in some geographical domain. For various services which use geocast communication, ad hoc network is useful as network structure. Ad hoc networks are a kind of self-organing network where terminals communicate directly with each other without network infrastructure. For ad hoc networks, terminal power saving is an important issue, because terminals are driven by the battery powered system. One approach for this issue is reducing the radio transmission range of each terminal, but it degrades reachability of user data for each terminal. In this paper, we propose a design method for radio transmission range using the target problem to improve both terminal power saving and reachability for geocast communication in an ad hoc network. Moreover, we evaluate the proposed method considering both routing protocols and media access control protocols, and clarify the applicability of the proposed method to communication protocols.

7021-7040hit(42807hit)