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6621-6640hit(42807hit)

  • lq Sparsity Penalized STAP Algorithm with Sidelobe Canceler Architecture for Airborne Radar

    Xiaoxia DAI  Wei XIA  Wenlong HE  

     
    LETTER-Information Theory

      Vol:
    E100-A No:2
      Page(s):
    729-732

    Much attention has recently been paid to sparsity-aware space-time adaptive processing (STAP) algorithms. The idea of sparsity-aware technology is commonly based on the convex l1-norm penalty. However, some works investigate the lq (0 < q < 1) penalty which induces more sparsity owing to its lack of convexity. We herein consider the design of an lq penalized STAP processor with a generalized sidelobe canceler (GSC) architecture. The lq cyclic descent (CD) algorithm is utilized with the least squares (LS) design criterion. It is validated through simulations that the lq penalized STAP processor outperforms the existing l1-based counterparts in both convergence speed and steady-state performance.

  • Mobility Control of TIPS-Pentacene Thin Films Prepared by Blade-Coating Method

    Ryo YAMAMICHI  Takaaki MANAKA  Dai TAGUCHI  Mitsumasa IWAMOTO  

     
    BRIEF PAPER

      Vol:
    E100-C No:2
      Page(s):
    130-132

    Carrier transport characteristics of TIPS-pentacene single crystalline film were controlled by changing the deposition condition of the blade-coating method. Anisotropic carrier transport in the single crystalline grain was visualized by means of the time-resolved microscopic optical second harmonic generation (TRM-SHG) measurement. Slow deposition yields the film with high mobility and large transport anisotropy. For molecular crystals, intermolecular interaction can be modified easily by changing the process condition.

  • Automatically Extracting Parallel Sentences from Wikipedia Using Sequential Matching of Language Resources

    Juryong CHEON  Youngjoong KO  

     
    LETTER-Natural Language Processing

      Pubricized:
    2016/11/11
      Vol:
    E100-D No:2
      Page(s):
    405-408

    In this paper, we propose a method to find similar sentences based on language resources for building a parallel corpus between English and Korean from Wikipedia. We use a Wiki-dictionary consisted of document titles from the Wikipedia and bilingual example sentence pairs from Web dictionary instead of traditional machine readable dictionary. In this way, we perform similarity calculation between sentences using sequential matching of the language resources, and evaluate the extracted parallel sentences. In the experiments, the proposed parallel sentences extraction method finally shows 65.4% of F1-score.

  • Controllability Analysis of Aggregate Demand Response System in Multiple Price-Change Situation

    Kazuhiro SATO  Shun-ichi AZUMA  

     
    PAPER

      Vol:
    E100-A No:2
      Page(s):
    376-384

    The paper studies controllability of an aggregate demand response system, i.e., the amount of the change of the total electric consumption in response to the change of the electric price, for real-time pricing (RTP). In order to quantify the controllability, this paper defines the controllability index as the lowest occurrence probability of the total electric consumption when the best possible the electric price is chosen. Then the paper formulates the problem which finds the consumer group maximizing the controllability index. The controllability problem becomes hard to solve as the number of consumers increases. To give a solution of the controllability problem, the article approximates the controllability index by the generalized central limit theorem. Using the approximated controllability index, the controllability problem can be reduced to a problem for solving nonlinear equations. Since the number of variables of the equations is independent of the number of consumers, an approximate solution of the controllability problem is obtained by numerically solving the equations.

  • Linear Quadratic Regulator with Decentralized Event-Triggering

    Kyohei NAKAJIMA  Koichi KOBAYASHI  Yuh YAMASHITA  

     
    PAPER

      Vol:
    E100-A No:2
      Page(s):
    414-420

    Event-triggered control is a control method that the measured signal is sent to the controller only when a certain triggering condition on the measured signal is satisfied. In this paper, we propose a linear quadratic regulator (LQR) with decentralized triggering conditions. First, a suboptimal solution to the design problem of LQRs with decentralized triggering conditions is derived. A state-feedback gain can be obtained by solving a convex optimization problem with LMI (linear matrix inequality) constraints. Next, the relation between centralized and decentralized triggering conditions is discussed. It is shown that control performance of an LQR with decentralized event-triggering is better than that with centralized event-triggering. Finally, a numerical example is illustrated.

  • FPGA Hardware Acceleration of a Phylogenetic Tree Reconstruction with Maximum Parsimony Algorithm

    Henry BLOCK  Tsutomu MARUYAMA  

     
    PAPER-Computer System

      Pubricized:
    2016/11/14
      Vol:
    E100-D No:2
      Page(s):
    256-264

    In this paper, we present an FPGA hardware implementation for a phylogenetic tree reconstruction with a maximum parsimony algorithm. We base our approach on a particular stochastic local search algorithm that uses the Progressive Neighborhood and the Indirect Calculation of Tree Lengths method. This method is widely used for the acceleration of the phylogenetic tree reconstruction algorithm in software. In our implementation, we define a tree structure and accelerate the search by parallel and pipeline processing. We show results for eight real-world biological datasets. We compare execution times against our previous hardware approach, and TNT, the fastest available parsimony program, which is also accelerated by the Indirect Calculation of Tree Lengths method. Acceleration rates between 34 to 45 per rearrangement, and 2 to 6 for the whole search, are obtained against our previous hardware approach. Acceleration rates between 2 to 36 per rearrangement, and 18 to 112 for the whole search, are obtained against TNT.

  • Sensor Fusion and Registration of Lidar and Stereo Camera without Calibration Objects

    Vijay JOHN  Qian LONG  Yuquan XU  Zheng LIU  Seiichi MITA  

     
    PAPER

      Vol:
    E100-A No:2
      Page(s):
    499-509

    Environment perception is an important task for intelligent vehicles applications. Typically, multiple sensors with different characteristics are employed to perceive the environment. To robustly perceive the environment, the information from the different sensors are often integrated or fused. In this article, we propose to perform the sensor fusion and registration of the LIDAR and stereo camera using the particle swarm optimization algorithm, without the aid of any external calibration objects. The proposed algorithm automatically calibrates the sensors and registers the LIDAR range image with the stereo depth image. The registered LIDAR range image functions as the disparity map for the stereo disparity estimation and results in an effective sensor fusion mechanism. Additionally, we perform the image denoising using the modified non-local means filter on the input image during the stereo disparity estimation to improve the robustness, especially at night time. To evaluate our proposed algorithm, the calibration and registration algorithm is compared with baseline algorithms on multiple datasets acquired with varying illuminations. Compared to the baseline algorithms, we show that our proposed algorithm demonstrates better accuracy. We also demonstrate that integrating the LIDAR range image within the stereo's disparity estimation results in an improved disparity map with significant reduction in the computational complexity.

  • Improving Purchase Behavior Prediction with Most Popular Items

    Chen CHEN  Jiakun XIAO  Chunyan HOU  Xiaojie YUAN  

     
    LETTER-Data Engineering, Web Information Systems

      Pubricized:
    2016/11/07
      Vol:
    E100-D No:2
      Page(s):
    367-370

    Purchase behavior prediction is one of the most important issues to promote both e-commerce companies' sales and the consumers' satisfaction. The prediction usually uses features based on the statistics of items. This kind of features can lead to the loss of detailed information of items. While all items are included, a large number of features has the negative impact on the efficiency of learning the predictive model. In this study, we propose to use the most popular items for improving the prediction. Experiments on the real-world dataset have demonstrated the effectiveness and the efficiency of our proposed method. We also analyze the reason for the performance of the most popular items. In addition, our work also reveals if interactions among most popular items are taken into account, the further significant improvement can be achieved. One possible explanation is that online retailers usually use a variety of sales promotion methods and the interactions can help to predict the purchase behavior.

  • Human-Centered Video Feature Selection via mRMR-SCMMCCA for Preference Extraction

    Takahiro OGAWA  Yoshiaki YAMAGUCHI  Satoshi ASAMIZU  Miki HASEYAMA  

     
    LETTER-Kansei Information Processing, Affective Information Processing

      Pubricized:
    2016/11/04
      Vol:
    E100-D No:2
      Page(s):
    409-412

    This paper presents human-centered video feature selection via mRMR-SCMMCCA (minimum Redundancy and Maximum Relevance-Specific Correlation Maximization Multiset Canonical Correlation Analysis) algorithm for preference extraction. The proposed method derives SCMMCCA, which simultaneously maximizes two kinds of correlations, correlation between video features and users' viewing behavior features and correlation between video features and their corresponding rating scores. By monitoring the derived correlations, the selection of the optimal video features that represent users' individual preference becomes feasible.

  • Multi-Channel Convolutional Neural Networks for Image Super-Resolution

    Shinya OHTANI  Yu KATO  Nobutaka KUROKI  Tetsuya HIROSE  Masahiro NUMA  

     
    PAPER-IMAGE PROCESSING

      Vol:
    E100-A No:2
      Page(s):
    572-580

    This paper proposes image super-resolution techniques with multi-channel convolutional neural networks. In the proposed method, output pixels are classified into K×K groups depending on their coordinates. Those groups are generated from separate channels of a convolutional neural network (CNN). Finally, they are synthesized into a K×K magnified image. This architecture can enlarge images directly without bicubic interpolation. Experimental results of 2×2, 3×3, and 4×4 magnifications have shown that the average PSNR for the proposed method is about 0.2dB higher than that for the conventional SRCNN.

  • Reduction of Max-Plus Algebraic Equations to Constraint Satisfaction Problems for Mixed Integer Programming

    Hiroyuki GOTO  

     
    LETTER

      Vol:
    E100-A No:2
      Page(s):
    427-430

    This letter presents a method for solving several linear equations in max-plus algebra. The essential part of these equations is reduced to constraint satisfaction problems compatible with mixed integer programming. This method is flexible, compared with optimization methods, and suitable for scheduling of certain discrete event systems.

  • FOREWORD Open Access

    Susumu Noda  

     
    FOREWORD

      Vol:
    E100-C No:2
      Page(s):
    149-149
  • FOREWORD

    Shinsuke Hara  

     
    FOREWORD

      Vol:
    E100-A No:2
      Page(s):
    345-345
  • FOREWORD

    Shoichi Kitamura  

     
    FOREWORD

      Vol:
    E100-A No:2
      Page(s):
    366-366
  • Radar and Camera Data Association Algorithm for Sensor Fusion

    Yohei OISHI  Isamu MATSUNAMI  

     
    LETTER

      Vol:
    E100-A No:2
      Page(s):
    510-514

    This paper presents a method to accelerate target recognition processing in advanced driver assistance systems (ADAS). A histogram of oriented gradients (HOG) is an effective descriptor for object recognition in computer vision and image processing. The HOG is expected to replace conventional descriptors, e.g., template-matching, in ADAS. However, the HOG does not consider the occurrences of gradient orientation on objects when localized portions of an image, i.e., a region of interest (ROI), are not set precisely. The size and position of the ROI should be set precisely for each frame in an automotive environment where the target distance changes dynamically. We use radar to determine the size and position of the ROI in a HOG and propose a radar and camera sensor fusion algorithm. Experimental results are discussed.

  • Quantum Optimal Multiple Assignment Scheme for Realizing General Access Structure of Secret Sharing

    Ryutaroh MATSUMOTO  

     
    LETTER-Cryptography and Information Security

      Vol:
    E100-A No:2
      Page(s):
    726-728

    The multiple assignment scheme is to assign one or more shares to single participant so that any kind of access structure can be realized by classical secret sharing schemes. We propose its quantum version including ramp secret sharing schemes. Then we propose an integer optimization approach to minimize the average share size.

  • Throughput Performance of Joint Detection in Non-Orthogonal Multiple Access Schemes

    Takahiro YAZAKI  Yukitoshi SANADA  

     
    PAPER-Wireless Communication Technologies

      Pubricized:
    2016/09/05
      Vol:
    E100-B No:2
      Page(s):
    344-353

    Non-orthogonal multiple access (NOMA) makes multiple mobile users share the same frequency band. In a conventional NOMA scheme, a user pair that can be assigned to the same frequency resource is limited, which reduces the amount of capacity improvement possible. This is because a far user demodulates a signal without canceling an underlaid signal for a near user. In addition, semi-orthogonal multiple access (SOMA) modulation has been proposed. This modulation scheme helps to reduce scheduling complexity and demodulation complexity. In this paper, a joint detection scheme is applied to a far user as well as a near user in a NOMA downlink. The joint detection in the far user leads to a more number of user pairs that can be assigned to the same frequency resource through proportional fair scheduling. The total system throughput performance with the joint detection is evaluated with multi-cell system level simulation. Numerical results show that the joint detection in the original NOMA system increases the system throughput more effectively than that with SOMA modulation.

  • Structural and Behavioral Properties of Well-Structured Workflow Nets

    Zhaolong GOU  Shingo YAMAGUCHI  

     
    PAPER

      Vol:
    E100-A No:2
      Page(s):
    421-426

    Workflow nets (WF-nets for short) are a standard way to automate business processes. Well-Structured WF-nets (WS WF-nets for short) are an important subclass of WF-nets because they have a well-balanced capability to expression power and analysis power. In this paper, we revealed structural and behavioral properties of WS WF-nets. Our results on structural properties are: (i) There is no EFC but non-FC WF-net in WS WF-nets; (ii) A WS WF-net is sound iff it is a van Hee et al.'s ST-net. Our results on behavioral properties are: (i) Any WS WF-net is safe; (ii) Any WS WF-net is separable; (iii) A necessary and sufficient condition on reachability of sound WS WF-net (N,[pIk]). Finally we illustrated the usefulness of the proposed properties with an application example of analyzing workflow evolution.

  • Effect of Background Pressure on the Performance of Organic Field Effect Transistors with Copper Electrodes

    Cuong Manh TRAN  Tatsuya MURAKAMI  Heisuke SAKAI  Hideyuki MURATA  

     
    BRIEF PAPER

      Vol:
    E100-C No:2
      Page(s):
    122-125

    We demonstrate the effect of vacuum pressure on the mobility (µ) and the threshold voltage (Vth) of organic field effect transistor (OFETs) using copper as source-drain electrodes. OFETs with copper electrodes deposited at high background pressure are better in electric characteristics compared with traditional devices fabricated under low pressure using gold electrodes.

  • Further Results on the Minimum and Stopping Distances of Full-Length RS-LDPC Codes

    Haiyang LIU  Hao ZHANG  Lianrong MA  

     
    LETTER-Coding Theory

      Vol:
    E100-A No:2
      Page(s):
    738-742

    Based on the codewords of the [q,2,q-1] extended Reed-Solomon (RS) code over the finite field Fq, we can construct a regular binary γq×q2 matrix H(γ,q), where q is a power of 2 and γ≤q. The matrix H(γ,q) defines a regular low-density parity-check (LDPC) code C(γ,q), called a full-length RS-LDPC code. Using some analytical methods, we completely determine the values of s(H(4,q)), s(H(5,q)), and d(C(5,q)) in this letter, where s(H(γ,q)) and d(C(γ,q)) are the stopping distance of H(γ,q) and the minimum distance of C(γ,q), respectively.

6621-6640hit(42807hit)