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[Author] Yan TIAN(4hit)

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  • CCN-Based Vehicle-to-Vehicle Communication in DSRC for Content Distribution in Urban Environments Open Access

    Haiyan TIAN  Yoshiaki SHIRAISHI  Masami MOHRI  Masakatu MORII  

     
    PAPER-System Construction Techniques

      Pubricized:
    2019/06/21
      Vol:
    E102-D No:9
      Page(s):
    1653-1664

    Dedicated Short Range Communication (DSRC) is currently standardized as a leading technology for the implementation of Vehicular Networks. Non-safety application in DSRC is emerging beyond the initial safety application. However, it suffers from a typical issue of low data delivery ratio in urban environments, where static and moving obstacles block or attenuate the radio propagation, as well as other technical issues such as temporal-spatial restriction, capital cost for infrastructure deployments and limited radio coverage range. On the other hand, Content-Centric Networking (CCN) advocates ubiquitous in-network caching to enhance content distribution. The major characteristics of CCN are compatible with the requirements of vehicular networks so that CCN could be available by vehicular networks. In this paper, we propose a CCN-based vehicle-to-vehicle (V2V) communication scheme on the top of DSRC standard for content dissemination, while demonstrate its feasibility by analyzing the frame format of Beacon and WAVE service advertisement (WSA) messages of DSRC specifications. The simulation-based validations derived from our software platform with OMNeT++, Veins and SUMO in realistic traffic environments are supplied to evaluate the proposed scheme. We expect our research could provide references for future more substantial revision of DSRC standardization for CCN-based V2V communication.

  • Ultrasonic Measurement of the Thin Oil-Slick Thickness Based on the Compressed Sensing Method

    Di YAO  Qifeng ZHANG  Qiyan TIAN  Hualong DU  

     
    LETTER-Digital Signal Processing

      Pubricized:
    2023/01/17
      Vol:
    E106-A No:7
      Page(s):
    998-1001

    A super-resolution algorithm is proposed to solve the problem of measuring the thin thickness of oil slick using compressed sensing theory. First, a mathematical model of a single pulse underwater ultrasonic echo is established. Then, the estimation model of the transmit time of flight (TOF) of ultrasonic echo within oil slick is given based on the sparsity of echo signals. At last, the super-resolution TOF value can be obtained by solving the sparse convex optimization problem. Simulations and experiments are conducted to validate the performance of the proposed method.

  • Improved Analysis for SOMP Algorithm in Terms of Restricted Isometry Property

    Xiaobo ZHANG  Wenbo XU  Yan TIAN  Jiaru LIN  Wenjun XU  

     
    LETTER-Digital Signal Processing

      Vol:
    E103-A No:2
      Page(s):
    533-537

    In the context of compressed sensing (CS), simultaneous orthogonal matching pursuit (SOMP) algorithm is an important iterative greedy algorithm for multiple measurement matrix vectors sharing the same non-zero locations. Restricted isometry property (RIP) of measurement matrix is an effective tool for analyzing the convergence of CS algorithms. Based on the RIP of measurement matrix, this paper shows that for the K-row sparse recovery, the restricted isometry constant (RIC) is improved to $delta_{K+1}< rac{sqrt{4K+1}-1}{2K}$ for SOMP algorithm. In addition, based on this RIC, this paper obtains sufficient conditions that ensure the convergence of SOMP algorithm in noisy case.

  • Recognition of Plural Grouping Patterns in Trademarks for CBIR According to the Gestalt Psychology

    Koji ABE  Hiromasa IGUCHI  Haiyan TIAN  Debabrata ROY  

     
    PAPER-Vision and Image

      Vol:
    E89-D No:6
      Page(s):
    1798-1805

    According to the Gestalt principals, this paper presents a recognition method of grouping areas in trademark images modeling features for measuring the attraction degree between couples of image components. This investigation would be used for content-based image retrieval from the view of mirroring human perception for images. Depending on variability in human perception for trademark images, the proposed method finds grouping areas by calculating Mahalanobis distance with the features to every combination of two components in images. The features are extracted from every combination of two components in images, and the features represent proximity, shape similarity, and closure between two components. In addition, changing combination of the features, plural grouping patterns are output. Besides, this paper shows the efficiency and limits of the proposed method from experimental results. In the experiments, 104 participants have perceived grouping patterns to 74 trademark images and the human perceptions have been compared with outputs by the proposed method for the 74 images.